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| "title": "ESCNet: Entity-enhanced and Stance Checking Network for Multi-modal Fact-Checking", |
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| "author": "Fanrui Zhang;Jiawei Liu;Jingyi Xie;Qiang Zhang;Yongchao Xu;Zheng-Jun Zha", |
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| "title": "A Study of GDPR Compliance under the Transparency and Consent Framework", |
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| "author": "Mike Smith;Antonio Torres;Riley Grossman;Pritam Sen;Yi Chen;Cristian Borcea", |
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| "aff": "New Jersey Institute of Technology;New Jersey Institute of Technology;New Jersey Institute of Technology;New Jersey Institute of Technology;New Jersey Institute of Technology", |
| "aff_domain": "njit.edu;njit.edu;njit.edu;njit.edu;njit.edu", |
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| "title": "Privacy-Preserving and Fairness-Aware Federated Learning for Critical Infrastructure Protection and Resilience", |
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| "author": "Yanjun Zhang;Ruoxi Sun;Liyue Shen;Guangdong Bai;Jason Xue;Mark Huasong Meng;Xue Li;Ryan Ko;Surya Nepal", |
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| "aff": "University of Technology Sydney;CSIRO's Data61;University of Queensland; A*STAR;University of Queensland;University of Queensland;CSIRO", |
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| { |
| "id": "0iwNrRRIiZ", |
| "title": "Masked Graph Autoencoder with Non-discrete Bandwidths", |
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| "status": "Poster", |
| "keywords": "Graph neural networks;graph self-supervised learning;masked graph autoencoders", |
| "primary_area": "", |
| "author": "Ziwen Zhao;Yuhua Li;Yixiong Zou;Jiliang Tang;Ruixuan Li", |
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| "aff": "Huazhong University of Science and Technology;Huazhong University of Science and Technology;Michigan State University;Huazhong University of Science and Technology", |
| "aff_domain": "hust.edu.cn;hust.edu.cn;msu.edu;hust.edu.cn", |
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| { |
| "id": "0mNYLhS1pN", |
| "title": "Generative News Recommendation", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "News Recommendation; Generative Recommendation", |
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| "author": "Shen Gao;Jiabao Fang;Quan Tu;Zhitao Yao;Zhumin Chen;Pengjie Ren;Zhaochun Ren", |
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| "aff": "Shandong University;Shandong University;Shandong University;Shandong University;Shandong University;Leiden University;Renmin University of China", |
| "aff_domain": "sdu.edu.cn;sdu.edu.cn;sdu.edu.cn;sdu.edu.cn;sdu.edu.cn;liacs.leidenuniv.nl;ruc.edu.cn", |
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| { |
| "id": "0utESEzD6E", |
| "title": "ARTEMIS: Detecting Airdrop Hunters in NFT Markets with a Graph Learning System", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Airdrop Hunters;Web3;NFTs;Graph Neural Network;Multimodal Deep Learning", |
| "primary_area": "", |
| "author": "Chenyu Zhou;Hongzhou Chen;Hao Wu;Junyu Zhang;Wei Cai", |
| "authorids": "~Chenyu_Zhou3;~Hongzhou_Chen1;~Hao_Wu42;~Junyu_Zhang5;~Wei_Cai3", |
| "aff": "The Chinese University of Hong Kong, Shenzhen;Mohamed bin Zayed University of Artificial Intelligence;The Chinese University of Hong Kong, Shenzhen;The Chinese University of Hong Kong, Shenzhen;The Chinese University of Hong Kong, Shenzhen", |
| "aff_domain": "cuhk.edu.cn;mbzuai.ac.ae;cuhk.edu.cn;cuhk.edu.cn;cuhk.edu.cn", |
| "position": "MS student;Researcher;PhD student;Assistant Professor;PhD student", |
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| "id": "0x1bm3XsuC", |
| "title": "E2USD: Efficient-yet-effective Unsupervised State Detection for Multivariate Time Series", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Unsupervised State Detection;Time Series Representation Learning;Contrastive Learning", |
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| "author": "Zhichen Lai;Huan Li;Dalin Zhang;Yan Zhao;Weizhu Qian;Christian S. Jensen", |
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| "aff": "Aalborg University;Zhejiang University;Aalborg University, Aalborg University;Suzhou University;Aalborg University", |
| "aff_domain": "cs.aau.dk;zju.edu.cn;cs.aau.dk;suda.edu.cn;cs.aau.dk", |
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| "id": "1GIGp2MgFH", |
| "title": "Lower-Left Partial AUC: An Effective and Efficient Optimization Metric for Recommendation", |
| "track": "main", |
| "status": "Poster", |
| "keywords": "Partial AUC; Recommendation system; Optimization Metric", |
| "primary_area": "", |
| "author": "Wentao Shi;Chenxu Wang;Fuli Feng;Yang Zhang;Wenjie Wang;Junkang Wu;Xiangnan He", |
| "authorids": "~Wentao_Shi1;~Chenxu_Wang4;~Fuli_Feng1;~Yang_Zhang24;~Wenjie_Wang1;~Junkang_Wu1;~Xiangnan_He1", |
| "aff": "University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China;National University of Singapore;University of Science and Technology of China;University of Science and Technology of China;Kuaishou- \u5feb\u624b\u79d1\u6280", |
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| { |
| "id": "1GVyE9J021", |
| "title": "Matching Feature Separation Network for Domain Adaptation in Entity Matching", |
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| "status": "Poster", |
| "keywords": "Entity matching;Deep neural network;Domain adaptation;Matching feature separation network;Data integration", |
| "primary_area": "", |
| "author": "Chenchen Sun;Yang Xu;Derong shen;Tiezheng Nie", |
| "authorids": "~Chenchen_Sun3;~Yang_Xu23;~Derong_shen1;~Tiezheng_Nie1", |
| "aff": "Tianjin University of Technology;Northeastern University", |
| "aff_domain": "tjut.edu.cn;neu.edu", |
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| "id": "1IqCKEGGgw", |
| "title": "Consistency Guided Knowledge Retrieval and Denoising in LLMs for Zero-shot Document-level Relation Triplet Extraction", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Document-level Relation Triplet Extraction;Zero-shot Learning;Knowledge Denoising;Large Language Models;Synthetic Data", |
| "primary_area": "", |
| "author": "Qi Sun;Kun Huang;Xiaocui Yang;Rong Tong;Kun Zhang;Soujanya Poria", |
| "authorids": "~Qi_Sun8;~Kun_Huang15;~Xiaocui_Yang1;~Rong_Tong2;~Kun_Zhang14;~Soujanya_Poria1", |
| "aff": "Nanjing University of Science and Technology;Nanjing University of Science and Technology;Northeastern University;Singapore Institute of Technology;Singapore University of Technology and Design;Nanjing University of Science and Technology", |
| "aff_domain": "njust.edu.cn;njust.edu.cn;neu.edu.cn;singaporetech.edu.sg;sutd.edu.sg;njust.edu.cn", |
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| "id": "1LEQBHanqf", |
| "title": "Social Media Discourses on Interracial Intimacy: Tracking Racism and Sexism through Chinese Geo-located Social Media Data", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Interracial Intimate Relationships;Social Media;Sentiment Analysis;IP Geolocation", |
| "primary_area": "", |
| "author": "Zheng WEI;Yixuan Xie;Danyun XIAO;Simin Zhang;Pan Hui;Muzhi ZHOU", |
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| "aff": "Hong Kong University of Science and Technology\uff08GuangZhou\uff09;Hong Kong University of Science and Technology;Hong Kong University of Science and Technology(Guangzhou);Hong Kong University of Science and Technology;The Hong Kong University of Science and Technology (Guangzhou)", |
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| "title": "Query2GMM: Learning Representation with Gaussian Mixture Model for Reasoning over Knowledge Graphs", |
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| "status": "Oral", |
| "keywords": "Knowledge Graph;Probabilistic Reasoning;Logical Query;Multi-modal Distribution;Neural Reasoning", |
| "primary_area": "", |
| "author": "Yuhan Wu;Yuanyuan Xu;Wenjie Zhang;Xiwei Xu;Ying Zhang", |
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| "aff": "East China Normal University;University of New South Wales;the university of new south wales;CSIRO;University of Technology Sydney (UTS)", |
| "aff_domain": "ecnu.edu.cn;unsw.edu.au;cse.unsw.edu.au;data61.csiro.au;uts.eud.au", |
| "position": "MS student;PhD student;Full Professor;Principal Researcher;Full Professor", |
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| "id": "2IwSOTWvXu", |
| "title": "Convergence-Aware Online Model Selection with Time-Increasing Bandits", |
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| "status": "Oral", |
| "keywords": "Online Model Selection;Increasing Bandits", |
| "primary_area": "", |
| "author": "Yu Xia;Fang Kong;Tong Yu;Liya Guo;Ryan A. Rossi;Sungchul Kim;Shuai Li", |
| "authorids": "~Yu_Xia9;~Fang_Kong2;~Tong_Yu3;~Liya_Guo2;~Ryan_A._Rossi2;~Sungchul_Kim1;~Shuai_Li3", |
| "aff": "University of Michigan;Shanghai Jiaotong University;Adobe Research;Tsinghua University;Adobe Systems;John Hopcroft Center, Shanghai Jiao Tong University;Adobe Research", |
| "aff_domain": "umich.edu;sjtu.edu.cn;adobe.com;mails.tsinghua.edu.cn;adobe.com;sjtu.edu.cn;adobe.com", |
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| "title": "Link Prediction on Multilayer Networks through Learning of Within-Layer and Across-Layer Node-Pair Structural Features and Node Embedding Similarity", |
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| "keywords": "graph-based machine learning;link prediction;multilayer networks", |
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| "author": "Lorenzo Zangari;Domenico Mandaglio;Andrea Tagarelli", |
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| "aff": "University of Calabria;University of Calabria;University of Calabria", |
| "aff_domain": "unical.it;unical.it;unical.it", |
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| "title": "Beyond Labels and Topics: Discovering Causal Relationships in Neural Topic Modeling", |
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| "keywords": "Causal relationships discovery;Neural topic model;Structural Causal Model", |
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| "author": "Yi-Kun Tang;Heyan Huang;Xuewen Shi;Xian-Ling Mao", |
| "authorids": "~Yi-Kun_Tang1;~Heyan_Huang1;~Xuewen_Shi1;~Xian-Ling_Mao1", |
| "aff": "Beijing Institute of Technology;Beijing Institute of Technology;Beijing Institute of Technology", |
| "aff_domain": "bit.edu.cn;bit.edu.cn;bit.edu.cn", |
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| "title": "Cross-Space Adaptive Filter: Integrating Graph Topology and Node Attributes for Alleviating the Over-smoothing Problem", |
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| "author": "Chen Huang;Haoyang Li;Yifan Zhang;Wenqiang Lei;Jiancheng Lv", |
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| "aff": "Cornell University;Vanderbilt University;Sichuan University;Sichuan University", |
| "aff_domain": "med.cornell.edu;vanderbilt.edu;scu.edu.cn;scu.edu.cn", |
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| "title": "Is Contrastive Learning Necessary? A Study of Data Augmentation vs Contrastive Learning in Sequential Recommendation", |
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| "author": "Peilin Zhou;You-Liang Huang;Yueqi XIE;Jingqi Gao;Shoujin Wang;Jaeboum KIM;Sunghun Kim", |
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| "id": "32oBtcUTfz", |
| "title": "IDEA-DAC: Integrity-Driven Editing for Accountable Decentralized Anonymous Credentials", |
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| "author": "Zonglun Li;Shuhao Zheng;Junliang Luo;Ziyue Xin;Xue Liu", |
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| "aff": "McGill University, McGill University;McGill University;McGill University;, McGill University;McGill University", |
| "aff_domain": "mail.mcgill.ca;mcgill.ca;mcgill.ca;cs.mcgill.ca;mcgill.ca", |
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| { |
| "id": "39AIGw9x8m", |
| "title": "Interface Illusions: Uncovering the Rise of Visual Scams in Cryptocurrency Wallets", |
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| "author": "Guoyi Ye;Geng Hong;Yuan Zhang;Min Yang", |
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| "aff": "Fudan University;Fudan University;Fudan University;Fudan University", |
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| { |
| "id": "3CojD79xYh", |
| "title": "MatchNAS: Optimizing Edge AI in Sparse-Label Data Contexts via Automating Deep Neural Network Porting for Mobile Deployment", |
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| "status": "Poster", |
| "keywords": "Edge AI;mobile intelligence;deep neural network;AutoML", |
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| "author": "Hongtao Huang;Lina Yao;Xiaojun Chang;Wen Hu", |
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| "aff": "University of New South Wales;CSIRO's Data61;University of New South Wales;University of Technology Sydney", |
| "aff_domain": "unsw.edu.au;data61.csiro.au;unsw.edu.au;uts.edu.au", |
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| { |
| "id": "3TSpM7X2aY", |
| "title": "DRAM-like Architecture with Asynchronous Refreshing for Continual Relation Extraction", |
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| "status": "Oral", |
| "keywords": "Continual Relation Extraction;Dynamic Random Access Memory;Memory Allocation;Refreshing Strategy", |
| "primary_area": "", |
| "author": "Tianci Bu;Kang Yang;Wenchuan Yang;Jiawei Feng;Xiaoyu Zhang;Xin Lu", |
| "authorids": "~Tianci_Bu1;~Kang_Yang7;~Wenchuan_Yang1;~Jiawei_Feng2;~Xiaoyu_Zhang13;~Xin_Lu12", |
| "aff": "National University of Defense Technology;National University of Defense Technology;National University of Defense Technology;National University of Defense Technology;National University of Defense Technology;Renmin University of China", |
| "aff_domain": "nudt.edu.cn;nudt.edu.cn;nudt.edu.cn;nudt.edu.cn;nudt.edu.cn;ruc.edu.cn", |
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| { |
| "id": "3YYtaQir1f", |
| "title": "Fingerprinting the Shadows: Unmasking Malicious Servers with Machine Learning-Powered TLS Analysis", |
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| "status": "Oral", |
| "keywords": "TLS;TLS Fingerprinting;Active Probing;Botnet;Command and Control;Server Characterization;Machine Learning;Explainability", |
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| "author": "Andreas Theofanous;Eva Papadogiannaki;Alexander Shevtsov;Sotiris Ioannidis", |
| "authorids": "~Andreas_Theofanous1;~Eva_Papadogiannaki1;~Alexander_Shevtsov1;~Sotiris_Ioannidis1", |
| "aff": "Technical University of Crete;University of Crete, University of Crete;Technical University of Crete", |
| "aff_domain": "tuc.gr;csd.uoc.gr;tuc.gr", |
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| { |
| "id": "3ZEQ0TENg1", |
| "title": "Taxonomy Completion via Implicit Concept Insertion", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Taxonomy Completion;Taxonomy Enrichment;Ontology Engineering;Text Summarisation;Pre-trained Language Model", |
| "primary_area": "", |
| "author": "Jingchuan Shi;Hang Dong;Jiaoyan Chen;ZHE WU;Ian Horrocks", |
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| "aff": "Department of Computer Science;Department of Computer Science, University of Oxford;University of Oxford", |
| "aff_domain": "cs.ox.ac.uk;cs.ox.ac.uk;ox.ac.uk", |
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| { |
| "id": "3cna82jLrS", |
| "title": "Heterogeneous Subgraph Transformer for Fake News Detection", |
| "track": "main", |
| "status": "Oral", |
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| "primary_area": "", |
| "author": "Yuchen Zhang;Xiaoxiao Ma;Jia Wu;Jian Yang;Hao Fan", |
| "authorids": "~Yuchen_Zhang10;~Xiaoxiao_Ma2;~Jia_Wu3;~Jian_Yang13;~Hao_Fan2", |
| "aff": "Wuhan University;Macquarie University;Macquarie University;Macquarie University;Wuhan University", |
| "aff_domain": "whu.edu.cn;mq.edu.au;mq.edu.au;mq.edu.au;whu.edu.cn", |
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| { |
| "id": "3ebYzt0obL", |
| "title": "SatGuard: Concealing Endless and Bursty Packet Losses in LEO Satellite Networks for Delay-Sensitive Web Applications", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "LEO satellite networks;webRTC;web browsing;loss recovery", |
| "primary_area": "", |
| "author": "Jihao Li;Hewu Li;Zeqi Lai;Qian Wu;Yijie Liu;Qi Zhang;Yuanjie Li;Jun Liu", |
| "authorids": "~Jihao_Li2;~Hewu_Li1;~Zeqi_Lai2;~Qian_Wu8;~Yijie_Liu2;~Qi_Zhang45;~Yuanjie_Li3;~Jun_Liu28", |
| "aff": "Zhongguancun Laboratory;Tsinghua University;Zhongguancun Laboratory;Tsinghua University;Tsinghua University", |
| "aff_domain": "zgclab.edu.cn;tsinghua.edu.cn;zgclab.edu.cn;tsinghua.edu.cn;tsinghua.edu.cn", |
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| { |
| "id": "3mtJnDbfo9", |
| "title": "Top-Personalized-K Recommendation", |
| "track": "main", |
| "status": "Poster", |
| "keywords": "Recommender System;Collaborative Filtering;Personalization;Recommendation Size", |
| "primary_area": "", |
| "author": "WONBIN KWEON;SeongKu Kang;Sanghwan Jang;Hwanjo Yu", |
| "authorids": "~WONBIN_KWEON1;~SeongKu_Kang1;~Sanghwan_Jang1;~Hwanjo_Yu1", |
| "aff": "POSTECH;University of Illinois Urbana-Champaign;POSTECH;Pohang University of Science and Technology", |
| "aff_domain": "postech.ac.kr;cs.illinois.edu;postech.ac.kr;postech.edu", |
| "position": "PhD student;Postdoc;PhD student;Full Professor", |
| "novelty": "3;5;5;6", |
| "technical_quality": "3;5;5;6", |
| "scope": "3;4;4;4", |
| "confidence": "3;2;3;4", |
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| "technical_quality_avg": 4.75, |
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| { |
| "id": "3yW6F0bUhC", |
| "title": "List-aware Reranking-Truncation Joint Model for Search and Retrieval-augmented Generation", |
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| "status": "Oral", |
| "keywords": "Reranking;Truncation;Retrieval-augmented large language models", |
| "primary_area": "", |
| "author": "Shicheng Xu;Liang Pang;Jun Xu;Huawei Shen;Xueqi Cheng", |
| "authorids": "~Shicheng_Xu2;~Liang_Pang1;~Jun_Xu1;~Huawei_Shen1;~Xueqi_Cheng1", |
| "aff": "Institute of Computing Technology, Chinese Academy of Sciences;Institute of Computing Technology, Chinese Academy of Sciences;Renmin University of China;Institute of Computing Technology, Chinese Academy of Sciences;Institute of Computing Technology, Chinese Academy", |
| "aff_domain": "ict.ac.cn;ict.ac.cn;ruc.edu.cn;ict.ac.cn;ict.ac.cn", |
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| "novelty": "5;5;5;5;5", |
| "technical_quality": "5;5;5;5;6", |
| "scope": "4;4;3;4;4", |
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| { |
| "id": "432AJU0zEt", |
| "title": "Efficient Computation for Diagonal of Forest Matrix via Variance-Reduced Forest Sampling", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Forest matrix;Wilson's algorithm;spanning converging forest;variance reduction", |
| "primary_area": "", |
| "author": "Haoxin Sun;Zhongzhi Zhang", |
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| "aff": "Fudan University;Fudan University", |
| "aff_domain": "fudan.edu.cn;fudan.edu.cn", |
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| "technical_quality": "5;5;5;5;6", |
| "scope": "4;3;4;3;4", |
| "confidence": "4;2;3;3;3", |
| "novelty_avg": 5.2, |
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| "replies_avg": 6, |
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| { |
| "id": "4ieLqLgu2q", |
| "title": "Collaborate to Adapt: Source-Free Graph Domain Adaptation via Bi-directional Adaptation", |
| "track": "main", |
| "status": "Poster", |
| "keywords": "Graph Neural Networks;Source-Free Unsupervised Graph Domain Adaptation", |
| "primary_area": "", |
| "author": "Zhen Zhang;Meihan Liu;an hui wang;Hongyang Chen;Zhao Li;Jiajun Bu;Bingsheng He", |
| "authorids": "~Zhen_Zhang14;~Meihan_Liu1;~an_hui_wang1;~Hongyang_Chen2;~Zhao_Li10;~Jiajun_Bu1;~Bingsheng_He1", |
| "aff": "National University of Singapore;Zhejiang University;Alibaba Group;Zhejiang Lab, China;Zhejiang University;Zhejiang University;National University of Singapore", |
| "aff_domain": "nus.edu.sg;zju.edu.cn;alibaba-inc.com;zhejianglab.com;zju.edu.cn;zju.edu.cn;nus.edu.sg", |
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| { |
| "id": "4qtxfjSyFE", |
| "title": "Advancing Web 3.0: Making Smart Contracts Smarter on Blockchain", |
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| "status": "Poster", |
| "keywords": "Web 3.0;Smart contract;Blockchain;Model inference;Trusted execution environment", |
| "primary_area": "", |
| "author": "Junqin Huang;Linghe Kong;Guanjie Cheng;Qiao Xiang;Guihai Chen;Gang Huang;Xue Liu", |
| "authorids": "~Junqin_Huang1;~Linghe_Kong1;~Guanjie_Cheng1;~Qiao_Xiang1;~Guihai_Chen3;~Gang_Huang1;~Xue_Liu1", |
| "aff": "Shanghai Jiaotong University;Shanghai Jiaotong University;Zhejiang University;Xiamen University;Shanghai Jiaotong University;Zhejiang University;McGill University", |
| "aff_domain": "sjtu.edu.cn;sjtu.edu.cn;zju.edu.cn;xmu.edu.cn;sjtu.edu.cn;zju.edu.cn;mcgill.ca", |
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| "scope": "1;3;3", |
| "confidence": "2;3;3", |
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| { |
| "id": "4zmXFCXFI7", |
| "title": "Efficiency of Non-Truthful Auctions in Auto-bidding with Budget Constraints", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "auto-bidding;auction design;price of anarchy;mechanism design", |
| "primary_area": "", |
| "author": "Christopher Liaw;Aranyak Mehta;Wennan Zhu", |
| "authorids": "~Christopher_Liaw1;~Aranyak_Mehta1;~Wennan_Zhu1", |
| "aff": "Google;Google Research;Google", |
| "aff_domain": "google.com;google.com;google.com", |
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| "scope": "4;3;4;4;4", |
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| { |
| "id": "5OClaaZpBL", |
| "title": "MSynFD: Multi-hop Syntax aware Fake News Detection", |
| "track": "main", |
| "status": "Poster", |
| "keywords": "Fake News Detection;Graph Neural Network;Debias", |
| "primary_area": "", |
| "author": "Liang Xiao;Qi Zhang;Chongyang Shi;Shoujin Wang;Usman Naseem;Liang Hu", |
| "authorids": "~Liang_Xiao4;~Qi_Zhang25;~Chongyang_Shi1;~Shoujin_Wang1;~Usman_Naseem1;~Liang_Hu1", |
| "aff": "Beijing Institute of Technology;Tongji University;Beijing Institute of Technology;University of Technology Sydney;James Cook University of North Queensland;Tongji University", |
| "aff_domain": "bit.edu.cn;tongji.edu.cn;bit.edu.cn;uts.edu.au;jcu.edu.au;tongji.edu.cn", |
| "position": "MS student;Researcher;Associate Professor;Lecturer;Lecturer;Full Professor", |
| "novelty": "3;6;6", |
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| { |
| "id": "5ezQQKTjUN", |
| "title": "A Matrix Calibration Method for Similarity Matrix with Incomplete Query", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Similarity Search;Incomplete Query;Positive Semi-definiteness;Similarity Matrix;Matrix Calibration", |
| "primary_area": "", |
| "author": "Changyi Ma;Runsheng Yu;Youzhi Zhang", |
| "authorids": "~Changyi_Ma1;~Runsheng_Yu2;~Youzhi_Zhang2", |
| "aff": "The Chinese University of Hong Kong;Hong Kong University of Science and Technology;Centre for Artificial Intelligence and Robotics, Hong Kong Institute of Science & Innovation, Chinese Academy of Sciences", |
| "aff_domain": "cuhk.edu.cn;ust.hk;cair-cas.org.hk", |
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| { |
| "id": "5nINTZKe4d", |
| "title": "Investigations of Top-Level Domain Name Collisions in Blockchain Naming Services", |
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| "author": "Daiki Ito;Yuta Takata;Hiroshi Kumagai;Masaki Kamizono", |
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| "title": "TikTok and the Art of Personalization: Investigating Exploration and Exploitation on Social Media Feeds", |
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| "title": "Physical Trajectory Inference Attack and Defense in Decentralized POI Recommendation", |
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| "title": "Question Difficulty Consistent Knowledge Tracing", |
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| "author": "Guimei Liu;Huijing Zhan;Jung-jae Kim", |
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| "title": "Diagrammatic Reasoning for ALC visualizations with Logic Graphs", |
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| "author": "Ildar Baimuratov", |
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| "title": "Poisoning Federated Recommender Systems with Fake Users", |
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| "author": "Ming Yin;Yichang Xu;Minghong Fang;Neil Zhenqiang Gong", |
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| "title": "On the Feasibility of Simple Transformer for Dynamic Graph Modeling", |
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| "author": "Yuxia Wu;Yuan Fang;Lizi Liao", |
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| "title": "Poisoning Attack on Federated Knowledge Graph Embedding", |
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| "author": "Enyuan Zhou;Song Guo;Zhixiu Ma;Zicong Hong;Tao GUO;Peiran Dong", |
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| "aff": "The Hong Kong Polytechnic University, Hong Kong Polytechnic University;Department of Computer Science and Engineering, Hong Kong University of Science and Technology;Hong Kong Polytechnic University;Hong Kong Polytechnic University", |
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| { |
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| "title": "Predictive Relevance Uncertainty for Recommendation Systems", |
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| "keywords": "Recommendation Systems;Uncertainty Quantification;CTR Prediction", |
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| "author": "Charul Paliwal;Anirban Majumder;Sivaramakrishnan R Kaveri", |
| "authorids": "~Charul_Paliwal1;~Anirban_Majumder2;~Sivaramakrishnan_R_Kaveri1", |
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| "title": "VPNSniffer: Identifying VPN Servers Through Graph-Represented Behaviors", |
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| "keywords": "VPN Detection;Active Probing;Node Classification", |
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| "author": "chenxu wang;Jiangyi Yin;Zhao Li;Hongbo Xu;Zhongyi Zhang;Qingyun Liu", |
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| "aff": "University of Chinese Academy of Sciences;Institute of Information Engineering, CAS;University of Chinese Academy of Sciences;Institute of Information Engineering\uff0cChinese Academy of Sciences", |
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| "title": "Scalable and Effective Generative Information Retrieval", |
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| "author": "Hansi Zeng;Chen Luo;Bowen Jin;Sheikh Muhammad Sarwar;Tianxin Wei;Hamed Zamani", |
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| "title": "Multi-Label Zero-Shot Product Attribute-Value Extraction", |
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| "author": "Jiaying Gong;Hoda Eldardiry", |
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| "aff": ", Virginia Polytechnic Institute and State University", |
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| "title": "Understanding GDPR Non-Compliance in Privacy Policies of Alexa Skills in European Marketplaces", |
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| "keywords": "Amazon alexa;GDPR;privacy policy", |
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| "author": "Song Liao;Mohammed Aldeen;Jingwen Yan;Long Cheng;Xiapu Luo;Haipeng Cai;Hongxin Hu", |
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| "aff": "Clemson University;Clemson University;Clemson University;Clemson University;Hong Kong Polytechnic University;Washington State University;State University of New York", |
| "aff_domain": "clemson.edu;clemson.edu;clemson.edu;clemson.edu;polyu.edu.hk;wsu.edu;buffalo.edu", |
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| { |
| "id": "84szxJZS1w", |
| "title": "Graph Anomaly Detection with Bi-level Optimization", |
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| "keywords": "Graph Anomaly Detection;Bi-level Optimization;Neighbor Label Distribution", |
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| "author": "Yuan Gao;Junfeng Fang;Yongduo Sui;Yangyang Li;Xiang Wang;HuaMin Feng;Yongdong Zhang", |
| "authorids": "~Yuan_Gao18;~Junfeng_Fang1;~Yongduo_Sui1;~Yangyang_Li3;~Xiang_Wang6;~HuaMin_Feng1;~Yongdong_Zhang2", |
| "aff": "University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China;Academy of Cyber;University of Science and Technology of China;department of computer science of BESTI;University of Science and Technology of China", |
| "aff_domain": "mail.ustc.edu.cn;ustc.edu.cn;ustc.edu.cn;live.com;ustc.edu.cn;besti.edu.cn;ustc.edu.cn", |
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| "title": "Online Billion-Scale Recommender Systems with Macro Graph Neural Networks", |
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| "author": "Hao Chen;Yuanchen Bei;Qijie Shen;Yue Xu;Sheng Zhou;Wenbing Huang;Feiran Huang;Senzhang Wang;Xiao Huang", |
| "authorids": "~Hao_Chen18;~Yuanchen_Bei1;~Qijie_Shen1;~Yue_Xu7;~Sheng_Zhou1;~Wenbing_Huang1;~Feiran_Huang1;~Senzhang_Wang2;~Xiao_Huang1", |
| "aff": "Hong Kong Polytechnic University;Zhejiang University;Alibaba Group;Zhejiang University;Renmin University of China;Jinan University;Central South University;The Hong Kong Polytechnic University", |
| "aff_domain": "polyu.edu.hk;zju.edu.cn;alibaba-inc.com;zju.edu.cn;ruc.edu.cn;jnu.edu.cn;csu.edu.cn;polyu.edu.hk", |
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| "id": "8HTwfqUYRz", |
| "title": "Spot Check Equivalence: an Interpretable Metric for Information Elicitation Mechanisms", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "Algorithmic Game Theory;Information Elicitation;Incentive for Effort;Peer Prediction", |
| "primary_area": "", |
| "author": "Shengwei Xu;Yichi Zhang;Paul Resnick;Grant Schoenebeck", |
| "authorids": "~Shengwei_Xu1;~Yichi_Zhang7;~Paul_Resnick1;~Grant_Schoenebeck1", |
| "aff": "University of Michigan - Ann Arbor;University of Michigan - Ann Arbor;University of Michigan - Ann Arbor", |
| "aff_domain": "umich.edu;umich.edu;umich.edu", |
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| "id": "8KMXZxEnA4", |
| "title": "Malicious Package Detection using Metadata Information", |
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| "status": "Poster", |
| "keywords": "NPM Metadata;Malicious Detection;Feature Extractions;Adversarial Attacks;Software Supply Chain", |
| "primary_area": "", |
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| "title": "SPRING: Improving the Throughput of Sharding Blockchain via Deep Reinforcement Learning Based State Placement", |
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| "title": "Air-CAD: Edge-Assisted Multi-Drone Network for Real-time Crowd Anomaly Detection", |
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| "title": "Ad vs Organic: Revisiting Incentive Compatible Mechanism Design in E-commerce Platforms", |
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| "author": "Xiyang Liu;Chunming Hu;Richong Zhang;Kai Sun;Samuel Mensah;Yongyi Mao", |
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| "title": "ModelGo: A Tool for Machine Learning License Analysis", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "License analysis;AI licensing;model mining", |
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| "author": "Moming Duan;Qinbin Li;Bingsheng He", |
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| "status": "Oral", |
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| "author": "Yupeng Li;Haorui He;Jin Bai;Dacheng Wen", |
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| "title": "Recommender Transformers with Behavior Pathways", |
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| "status": "Poster", |
| "keywords": "Recommendation;Deep Learning;Sequential Recommendation", |
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| "author": "Zhiyu Yao;Xinyang Chen;Sinan Wang;Qinyan Dai;Yumeng Li;Tanchao Zhu;Mingsheng Long", |
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| "title": "Unfiltered: Measuring Cloud-based Email Filtering Bypasses", |
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| "status": "Oral", |
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| "author": "Sumanth Rao;Enze Liu;Grant Ho;Geoffrey M. Voelker;Stefan Savage", |
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| "title": "A Multifaceted Look at Starlink Performance", |
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| "author": "Hao Liu;Jiarui Feng;Lecheng Kong;Dacheng Tao;Yixin Chen;Muhan Zhang", |
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| "title": "When Federated Recommendation Meets Cold-Start Problem: Separating Item Attributes and User Interactions", |
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| "author": "Chunxu Zhang;Guodong Long;Tianyi Zhou;Zijian Zhang;Peng Yan;Bo Yang", |
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| "aff": "Jilin University;University of Technology Sydney;University of Maryland, College Park;City University of Hong Kong;University of Technology Sydney;Jilin University", |
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| "title": "Can Small Language Models be Good Reasoners in Recommender Systems?", |
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| "status": "Oral", |
| "keywords": "Recommender Systems;Large Language Models;Distillation", |
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| "author": "Yuling Wang;Changxin Tian;Binbin Hu;Yanhua Yu;Ziqi Liu;Zhiqiang Zhang;JUN ZHOU;Liang Pang;Xiao Wang", |
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| "aff": "Beijing University of Posts and Telecommunications;Ant Group;Ant Group;Beijing University of Posts and Telecommunications;Ant Group;Ant Group;Ant Group;Institute of Computing Technology, Chinese Academy of Sciences;Beihang University", |
| "aff_domain": "bupt.edu.cn;antgroup.com;antfin.com;bupt.edu.cn;antgroup.com;antfin.com;antgroup.com;ict.ac.cn;buaa.edu.cn", |
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| "title": "Ask Me in English Instead: Cross-Lingual Evaluation of Large Language Models for Healthcare Queries", |
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| "author": "Yiqiao Jin;Mohit Chandra;Gaurav Verma;Yibo Hu;Munmun De Choudhury;Srijan Kumar", |
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| "aff": "Georgia Institute of Technology;Microsoft Research;J.P. Morgan Chase;Georgia Institute of Technology;Georgia Institute of Technology", |
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| "title": "Scalable Continuous-time Diffusion Framework for Network Inference and Influence Estimation", |
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| "title": "Towards Personalized Privacy: User-Governed Data Contribution for Federated Recommendation", |
| "track": "main", |
| "status": "Oral", |
| "keywords": "federated recommendation;recommender systems;graph neural networks", |
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| "author": "Liang Qu;Wei Yuan;Ruiqi Zheng;Lizhen Cui;Yuhui Shi;Hongzhi Yin", |
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| "title": "InfoRank: Unbiased Learning-to-Rank via Conditional Mutual Information Minimization", |
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| "keywords": "Unbiased Learning-to-Rank;Conditional Mutual Information;Position Bias;Popularity Bias", |
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| "author": "Jiarui Jin;Zexue He;Mengyue Yang;Weinan Zhang;Yong Yu;Jun Wang;Julian McAuley", |
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| "title": "The Double Edged Sword: Identifying Authentication Pages and their Fingerprinting Behavior", |
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| "author": "Asuman Senol;Alisha Ukani;Dylan J Cutler;Igor Bilogrevic", |
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| "title": "Descriptive Kernel Convolution Network with Improved Random Walk Kernel", |
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| "title": "Cold Start or Hot Start? Robust Slow Start in Congestion Control with A Priori Knowledge for Mobile Web Services", |
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| "aff": "Anhui University;Anhui University;BOSS Zhipin;Anhui University;Anhui University;BOSS Zhipin", |
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| "title": "Federated Learning Vulnerabilities: Privacy Attacks with Denoising Diffusion Probabilistic Models", |
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| "author": "Hongyan Gu;Xinyi Zhang;Jiang Li;Hui Wei;Baiqi Li;Xinli Huang", |
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| "aff": "East China Normal University;East China Normal University;East China Normal University;Wuhan University;East China Normal University;East China Normal University", |
| "aff_domain": "ecnu.edu.cn;ecnu.edu.cn;ecnu.edu.cn;whu.edu.cn;ecnu.edu.cn;ecnu.edu.cn", |
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| "author": "Fabian Christian Spaeh;Charalampos Tsourakakis", |
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| "aff": "Boston University, Boston University;Boston University", |
| "aff_domain": "bu.edu;bu.edu", |
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| "title": "TATKC: A Temporal Graph Neural Network for Fast Approximate Temporal Katz Centrality Ranking", |
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| "author": "Tianming Zhang;Junkai Fang;Zhengyi Yang;Bin Cao;JING FAN", |
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| "aff": "Zhejiang University of Technology;Zhejiang University of Technology;University of New South Wales;Zhejiang University of Technology;Zhejiang University of Technology", |
| "aff_domain": "zjut.edu.cn;zjut.edu.cn;unsw.edu.au;zjut.edu.cn;zjut.edu.cn", |
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| "title": "PAGE: Equilibrate Personalization and Generalization in Federated Learning", |
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| "title": "Understanding Human Preferences: Towards More Personalized Video to Text Generation", |
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| "title": "Exit Ripple Effects: Understanding the Disruption of Socialization Networks Following Employee Departures", |
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| "author": "David Gamba;Yulin Yu;Yuan Yuan;Grant Schoenebeck;Daniel Romero", |
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| "aff_domain": "umich.edu;umich.edu;purdue.edu;umich.edu", |
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| "title": "Multi-Modal Knowledge Distillation for Recommendation with Prompt-Tuning", |
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| "author": "Wei Wei;Jiabin Tang;Lianghao Xia;Yangqin Jiang;Chao Huang", |
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| "aff": "University of Hong Kong;University of Hong Kong;University of Hong Kong;University of Hong Kong", |
| "aff_domain": "hku.hk;hku.hk;hku.hk;hku.hk", |
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| "title": "Uncovering the Hidden Data Costs of Mobile YouTube Video Ads", |
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| "aff": "Lahore University of Management Sciences;Lahore University of Management Sciences;Lahore University of Management Sciences;Lahore University of Management Sciences", |
| "aff_domain": "lums.edu.pk;lums.edu.pk;lums.edu.pk;lums.edu.pk", |
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| "title": "Labor Space: A Unifying Representation of the Labor Market via Large Language Models", |
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| "author": "Yizheng Zhao", |
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| "title": "SSI, from Specifications to Protocol? Formally verify security!", |
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| "title": "Non-uniform Bid-scaling and Equilibria for Different Auctions: An Empirical Study", |
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| "author": "Yuan Deng;Jieming Mao;Vahab Mirrokni;Yifeng Teng;Song Zuo", |
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| "title": "PASS: Predictive Auto-Scaling System for Large-scale Enterprise Web Applications", |
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| "title": "Unifying Local and Global Knowledge: Empowering Large Language Models as Political Experts with Knowledge Graphs", |
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| "title": "DualCL: Principled Supervised Contrastive Learning as Mutual Information Maximization for Text Classification", |
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| "aff": "Beihang University;Beihang University;Beihang University;University of Ottawa;Beihang University", |
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| "title": "Fair Surveillance Assignment Problem", |
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| "title": "HaSa: Hardness and Structure-Aware Contrastive Knowledge Graph Embedding", |
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| "author": "Honggen Zhang;June Zhang;Igor Molybog", |
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| "title": "NETEVOLVE: Social Network Forecasting using Multi-Agent Reinforcement Learning with Interpretable Features", |
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| "title": "UniTime: A Language-Empowered Unified Model for Cross-Domain Time Series Forecasting", |
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| "title": "Mirror Gradient: Towards Robust Multimodal Recommender Systems via Exploring Flat Local Minima", |
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| "title": "UnifiedSSR: A Unified Framework of Sequential Search and Recommendation", |
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| "title": "Graph Pretraining and Prompt Learning for Recommendation", |
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| "aff_domain": "hku.hk;hku.hk;hku.hk", |
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| "title": "Towards Energy-efficient Federated Learning via INT8-based Training on Mobile DSPs", |
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| "title": "Toward Practical Entity Alignment Method Design: Insights from New Highly Heterogeneous Knowledge Graph Datasets", |
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| "aff_domain": "ict.ac.cn;idea.edu.cn;ict.ac.cn;ict.ac.cn;ict.ac.cn;ict.ac.cn;idea.edu.cn;ict.ac.cn", |
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| "title": "Fast Graph Condensation with Structure-based Neural Tangent Kernel", |
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| "author": "Lin WANG;Wenqi Fan;Jiatong LI;Yao Ma;Qing Li", |
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| "aff": "Hong Kong Polytechnic University;Hong Kong Polytechnic University;Hong Kong Polytechnic University;Rensselaer Polytechnic Institute;Hong Kong Polytechnic University", |
| "aff_domain": "polyu.edu.hk;polyu.edu.hk;connect.polyu.hk;rpi.edu;polyu.edu.hk", |
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| "id": "XYHuGINYNd", |
| "title": "An Efficient Automatic Meta-Path Selection for Social Event Detection via Hyperbolic Space", |
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| "status": "Poster", |
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| "author": "Zitai Qiu;Congbo Ma;Jia Wu;Jian Yang", |
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| "aff": "Macquarie University;The University of Adelaide;Macquarie University;Macquarie University", |
| "aff_domain": "mq.edu.au;adelaide.edu.au;mq.edu.au;mq.edu.au", |
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| "id": "XeI4Ou8Ncp", |
| "title": "Learning to Generate Explainable Stock Predictions using Self-Reflective Large Language Models", |
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| "status": "Poster", |
| "keywords": "computational finance;stock prediction;large language models;explainable AI;self-reflective", |
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| "author": "Kelvin J.L. Koa;Yunshan Ma;Ritchie Ng;Tat-Seng Chua", |
| "authorids": "~Kelvin_J.L._Koa1;~Yunshan_Ma1;~Ritchie_Ng1;~Tat-Seng_Chua2", |
| "aff": "National University of Singapore;National University of Singapore;National University of Singapore;National University of Singapore", |
| "aff_domain": "u.nus.edu;nus.edu.sg;u.nus;nus.edu.sg", |
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| { |
| "id": "YAxhm3NGWQ", |
| "title": "Graph Contrastive Learning via Interventional View Generation", |
| "track": "main", |
| "status": "Oral", |
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| "primary_area": "", |
| "author": "Zengyi Wo;Minglai Shao;Wenjun Wang;Xuan Guo;Lu Lin", |
| "authorids": "~Zengyi_Wo1;~Minglai_Shao2;~Wenjun_Wang6;~Xuan_Guo2;~Lu_Lin2", |
| "aff": "Tianjin University;Tianjin University;Tianjin University;Tianjin University;Pennsylvania State University", |
| "aff_domain": "tju.edu.cn;tju.edu.cn;tju.edu.cn;tju.edu.cn;psu.edu", |
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| "title": "GraphControl: Adding Conditional Control to Universal Graph Pre-trained Models for Graph Domain Transfer Learning", |
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| "status": "Oral", |
| "keywords": "Graph Neural Networks;Transfer Learning;Graph Representation Learning", |
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| "author": "Yun Zhu;Yaoke Wang;Haizhou Shi;Zhenshuo Zhang;Dian Jiao;Siliang Tang", |
| "authorids": "~Yun_Zhu4;~Yaoke_Wang1;~Haizhou_Shi1;~Zhenshuo_Zhang1;~Dian_Jiao2;~Siliang_Tang1", |
| "aff": "Zhejiang University;Alibaba Group;Rutgers University, New Brunswick;Zhejiang University;College of Computer Science and Technology, Zhejiang University;Zhejiang University", |
| "aff_domain": "zju.edu.cn;alibaba-inc.com;rutgers.edu;zju.edu.cn;cs.zju.edu.cn;zju.edu.cn", |
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| "title": "Multimodal Query Suggestion with Multi-Agent Reinforcement Learning from Human Feedback", |
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| "author": "Zheng Wang;BINGZHENG GAN;Wei Shi", |
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| "aff": "Huawei;Huawei Technologies Ltd.;Huawei Technologies Ltd.", |
| "aff_domain": "huawei.com;huawei.com;huawei.com", |
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| "title": "User Distribution Mapping Modelling with Collaborative Filtering for Cross Domain Recommendation", |
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| "keywords": "Recommendation", |
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| "author": "Weiming Liu;Chaochao Chen;Xinting Liao;Mengling Hu;Jiajie Su;Yanchao Tan;Fan Wang", |
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| "aff": "Zhejiang University;Zhejiang University;Zhejiang University;Zhejiang University;Fuzhou University;Zhejiang University", |
| "aff_domain": "zju.edu.cn;zju.edu.cn;zju.edu.cn;zju.edu.cn;fzu.edu.cn;zju.edu.cn", |
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| "title": "SymLearn: A Symbiotic Crowd-AI Collective Learning Framework to Web-based Healthcare Policy Adherence Assessment", |
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| "author": "Yang Zhang;Ruohan Zong;Lanyu Shang;Huimin Zeng;Zhenrui Yue;Dong Wang", |
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| "aff_domain": "uiuc.edu;uiuc.edu;illinois.edu;google.com;illinois.edu", |
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| "title": "Clickbait vs. Quality: How Engagement-Based Optimization Shapes the Content Landscape in Online Platforms", |
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| "authorids": "~Nicole_Immorlica3;~Meena_Jagadeesan1;~Brendan_Lucier1", |
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| "id": "ZFKhZeD12B", |
| "title": "From Shapes to Shapes: Inferring SHACL Shapes for Results of SPARQL CONSTRUCT Queries", |
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| "aff": "Universit\u00e4t Koblenz;Universit\u00e4t Stuttgart;Universit\u00e4t Koblenz;University of Southampton", |
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| "id": "ZINIh5I5nj", |
| "title": "Author Name Disambiguation via Paper Association Refinement and Compositional Contrastive Embedding", |
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| "keywords": "Author Name Disambiguation; Graph Structure Refinement; Contrastive Learning", |
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| "author": "Dezhi Liu;Richong Zhang;Junfan Chen;Xinyue Chen", |
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| "aff": "Beihang University;Beihang University;The Insititute of Advanced Computing Technology, Beijing University of Aeronautics and Astronautics;Beihang University", |
| "aff_domain": "buaa.edu.cn;buaa.edu.cn;act.buaa.edu.cn;buaa.edu.cn", |
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| "id": "ZR05TYT9Aq", |
| "title": "Inductive Cognitive Diagnosis for Fast Student Learning in Web-Based Intelligent Education Systems", |
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| "status": "Poster", |
| "keywords": "cognitive diagnosis;web-based online intelligent education systems;inductive learning", |
| "primary_area": "", |
| "author": "Shuo Liu;Junhao Shen;Hong Qian;Aimin Zhou", |
| "authorids": "~Shuo_Liu7;~Junhao_Shen2;~Hong_Qian1;~Aimin_Zhou1", |
| "aff": "East China Normal University;East China Normal University;East China Normal University;East China Normal University", |
| "aff_domain": "ecnu.edu.cn;ecnu.edu.cn;ecnu.edu.cn;ecnu.edu.cn", |
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| "id": "ZY8vsepZfM", |
| "title": "Category-based and Popularity-guided Video Game Recommendation: A Balance-oriented Framework", |
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| "title": "Fairness in link analysis ranking algorithms", |
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| "title": "Content Moderation and the Formation of Online Communities: A Theoretical Framework", |
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| "title": "On Truthful Item Acquiring Mechanisms for Reward Maximization", |
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| "author": "Liang Shan;Shuo Zhang;Jie Zhang;Zihe Wang", |
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| "title": "AN-Net: An Anti-Noise Network For Anonymous Traffic Classification", |
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| "author": "Xianwen Deng;Yijun Wang;Zhi Xue", |
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| "aff": "Shanghai Jiaotong University;Shanghai Jiaotong University;Shanghai Jiao Tong University", |
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| "author": "Bo Yan;YANG CAO;Haoyu Wang;Wenchuan Yang;Junping Du;Chuan Shi", |
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| { |
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| "title": "Self-guided Robust Graph Structure Refinement", |
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| "author": "Yeonjun In;Kanghoon Yoon;Kibum Kim;Kijung Shin;Chanyoung Park", |
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| "author": "Liuhuo Wan;Kailong Wang;Haoyu Wang;Guangdong Bai", |
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| "author": "Rahul Kanyal;Smruti Sarangi", |
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| "title": "Knowledge-Augmented Large Language Models for Personalized Contextual Query Suggestion", |
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| "title": "Getting Bored of Cyberwar: Exploring the Role of Low-level Cybercrime Actors in the Russia-Ukraine Conflict", |
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| "title": "Memory Disagreement: A Pseudo-Labeling Measure from Training Dynamics for Semi-supervised Graph Learning", |
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| "author": "Hongbin Pei;Yuheng Xiong;Pinghui Wang;Jing Tao;Jialun Liu;Huiqi Deng;Jie Ma;Xiaohong Guan", |
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| "title": "DenseFlow: Spotting Cryptocurreny Money Laundering in Ethereum Transaction Graphs", |
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| "keywords": "Anti-money laundering;Ethereum;Cryptocurrency;Transaction network;Graph mining", |
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| "author": "Dan Lin;Jiajing Wu;Yunmei Yu;Qishuang Fu;Zibin Zheng;Changlin Yang", |
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| "aff": "SUN YAT-SEN UNIVERSITY;SUN YAT-SEN UNIVERSITY;SUN YAT-SEN UNIVERSITY;SUN YAT-SEN UNIVERSITY", |
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| "title": "From Promises to Practice: Evaluating the Private Browsing Modes of Android Browser Apps", |
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| "keywords": "private browsing;mobile browser apps;privacy leakage", |
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| "author": "Xiaoyin Liu;Wenzhi Li;Qinsheng Hou;Shishuai Yang;Lingyun Ying;Wenrui Diao;Yanan Li;Shanqing Guo;Hai-Xin Duan", |
| "authorids": "~Xiaoyin_Liu1;~Wenzhi_Li2;~Qinsheng_Hou1;~Shishuai_Yang1;~Lingyun_Ying1;~Wenrui_Diao1;~Yanan_Li5;~Shanqing_Guo1;~Hai-Xin_Duan1", |
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| "id": "dU73Mgx7xm", |
| "title": "Graph-Skeleton: Less than 2% Nodes are Sufficient to Represent Billion-Scale Graph", |
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| "status": "Oral", |
| "keywords": "Graph Mining;Data Compression;Large-scale Web Graph;Graph Neural Networks", |
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| "author": "Linfeng Cao;Haoran Deng;Yang Yang;Chunping Wang;Lei CHEN", |
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| "aff": "The Ohio State University, Columbus;Zhejiang University;Zhejiang University;Finvolution Group;Peking University", |
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| "title": "Fake Resume Attacks: Data Poisoning on Online Job Platforms", |
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| "keywords": "fake resume;targeted attack;data poisoning;online job platforms", |
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| "author": "Michiharu Yamashita;Thanh Tran;Dongwon Lee", |
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| "aff": "Pennsylvania State University;Amazon;The Pennsylvania State University", |
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| "title": "Perceptions in pixels: analyzing perceived gender and skin tone in real-world image search results", |
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| "author": "Jeffrey Gleason;Avijit Ghosh;Ronald E. Robertson;Christo Wilson", |
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| "aff": "Northeastern University;University of Connecticut;Northeastern University", |
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| "title": "PhishinWebView: Analysis of Anti-Phishing Entities in Mobile Apps with WebView Targeted Phishing", |
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| "title": "T$^3$RD: Test-Time Training for Rumor Detection on Social Media", |
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| { |
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| "title": "Linear-Time Graph Neural Networks for Scalable Recommendations", |
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| "title": "Improving Retrieval in Theme-specific Applications using a Corpus Topical Taxonomy", |
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| "author": "SeongKu Kang;Shivam Agarwal;Bowen Jin;Dongha Lee;Hwanjo Yu;Jiawei Han", |
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| "title": "A Data-Centric Multi-Objective Learning Framework for Responsible Recommendation Systems", |
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| "author": "Xu Huang;Jianxun Lian;Eric Wang;Hao Liao;Defu Lian;Xing Xie", |
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| "title": "MultiGPrompt for Multi-Task Pre-Training and Prompting on Graphs", |
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| "author": "Xingtong Yu;Chang Zhou;Yuan Fang;Xinming Zhang", |
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| "title": "Modeling Balanced Explicit and Implicit Relations with Contrastive Learning for Knowledge Concept Recommendation in MOOCs", |
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| "author": "Gu Hengnian;Zhiyi Duan;Pan Xie;Dongdai Zhou", |
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| "title": "Cooperative Classification and Rationalization for Graph Generalization", |
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| "author": "Linan Yue;Qi Liu;Ye Liu;Weibo Gao;Fangzhou Yao;Wenfeng Li", |
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| "title": "An In-depth Investigation of User Response Simulation for Conversational Search", |
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| "author": "Zhenduo Wang;Zhichao Xu;Vivek Srikumar;Qingyao Ai", |
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| "title": "Unify Graph Learning with Text: Unleashing LLM Potentials for Session Search", |
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| "author": "Songhao Wu;Quan Tu;Hong Liu;Xu Jia;Zhongyi Liu;Guannan Zhang;Ran Lucien Wang;Xiuying Chen;Rui Yan", |
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| "title": "Learning Scalable Structural Representations for Link Prediction with Bloom Signatures", |
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| "title": "BOND: Bootstrapping From-Scratch Name Disambiguation with Multi-task Promoting", |
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| "author": "Yuqing Cheng;Bo Chen;Fanjin Zhang;Jie Tang", |
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| "aff": "Tsinghua University;Tsinghua University;Tsinghua University", |
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| "title": "HSDirSniper: A New Attack Exploiting Vulnerabilities in Tor's Hidden Service Directories", |
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| "author": "Qingfeng Zhang;Zhiyang Teng;Xuebin Wang;Yue Gao;Qingyun Liu;Jinqiao Shi", |
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| "aff": "University of Chinese Academy of Sciences;ByteDance Inc.;Tsinghua University;Beijing University of Post and Telecommunication", |
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| "title": "Negative Sampling in Next-POI Recommendations: Observation, Approach, and Evaluation", |
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| "aff": "Hanyang University;Hanyang University;Hanyang University", |
| "aff_domain": "hanyang.ac.kr;hanyang.ac.kr;hanyang.ac.kr", |
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| "title": "Dual Box Embeddings for the Description Logic EL++", |
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| "author": "Mathias Jackermeier;Jiaoyan Chen;Ian Horrocks", |
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| "title": "Link Recommendation to Augment Influence Diffusion with Provable Guarantees", |
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| "title": "Experimental Security Analyses of Access of Browser Extensions Accessing Sensitive Input Fields", |
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| "author": "Xingyi Zhang;Zixuan Weng;Sibo Wang", |
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| "title": "Dynamic Graph Information Bottleneck", |
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| "title": "Off-Policy Evaluation of Slate Bandit Policies via Optimizing Abstraction", |
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| "author": "Zhanfeng Mo;Tianze Luo;Sinno Jialin Pan", |
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| "author": "Yuqi Pan;Zhaohua Chen;Yuqing Kong", |
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| "aff": "Peking University;Peking University;Peking University", |
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| "title": "Hyperlink Hijacking: Exploiting Erroneous URL Links to Phantom Domains", |
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| "author": "Kevin Saric;Felix Savins;Gowri Sankar Ramachandran;Raja Jurdak;Surya Nepal", |
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| "title": "Temporal Conformity-aware Hawkes Graph Network for Recommendations", |
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| "author": "Chenglong Ma;Yongli Ren;Pablo Castells;Mark Sanderson", |
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| "aff": "Royal Melbourne Institute of Technology;Royal Melbourne Institute of Technology;Universidad Aut\u00f3noma de Madrid;Royal Melbourne Institute of Technology", |
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| "title": "AgentCF: Collaborative Learning with Autonomous Language Agents for Recommender Systems", |
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| "author": "Zhigang Kan;Liwen Peng;Yifu Gao;Ning Liu;Linbo Qiao;Dongsheng Li", |
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| "aff": "National University of Defense Technology;National University of Defense Technology;National University of Defense Technology;National University of Defense Technology", |
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| "title": "Analysis and Detection of \"Pink Slime\" Websites in Social Media Posts", |
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| "author": "Abdullah Aljebreen;Weiyi Meng;Eduard Dragut", |
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| "author": "Tianxiang Zhao;Xiang Zhang;Suhang Wang", |
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| "aff": "Pennsylvania State University;Pennsylvania State University;Pennsylvania State University", |
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| "title": "\ud835\udf06Grapher: A Resource-Efficient Serverless System for GNN Serving through Graph Sharing", |
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| "status": "Oral", |
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| "author": "Haichuan Hu;Fangming Liu;Qiangyu Pei;Yongjie Yuan;Zichen Xu;Lin Wang", |
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| "title": "Unveiling the Paradox of NFT Prosperity", |
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| "keywords": "NFT;Blockchain;Cryptocurrency;Market Manipulation;Wash Trading;Arbitrage", |
| "primary_area": "", |
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| "title": "Calibrating Graph Neural Networks from a Data-centric Perspective", |
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| "author": "Cheng Yang;Chengdong Yang;Chuan Shi;Yawen Li;Zhiqiang Zhang;JUN ZHOU", |
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| "title": "Follow the Path: Hierarchy-Aware Extreme Multi-Label Completion for Semantic Text Tagging", |
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| "title": "Generating Multi-turn Clarification for Web Information Seeking", |
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| "author": "Ziliang Zhao;Zhicheng Dou", |
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| { |
| "id": "mByBSWsYuD", |
| "title": "Blockchain Censorship", |
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| "author": "Anton Wahrst\u00e4tter;Jens Ernstberger;Aviv Yaish;Liyi Zhou;Kaihua Qin;Taro Tsuchiya;Sebastian Steinhorst;Davor Svetinovic;Nicolas Christin;Mikolaj Barczentewicz;Arthur Gervais", |
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| "title": "Core-Competitiveness in Partially Observable Networked Market", |
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| "author": "Bin Li;Dong Hao", |
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| "title": "Best of Three Worlds: Adaptive Experimentation for Digital Marketing in Practice", |
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| "author": "Tanner Fiez;houssam nassif;Yu-Cheng Chen;Sergio Gamez;Lalit K Jain", |
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| "title": "Intelligent Model Update Strategy for Sequential Recommendation", |
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| "author": "Zheqi Lv;Wenqiao Zhang;Zhengyu Chen;Shengyu Zhang;Kun Kuang", |
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| "aff": "Zhejiang University;Meituan;Zhejiang University;Zhejiang University", |
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| "title": "Individual Welfare Guarantees in the Autobidding World with Machine-learned Advice", |
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| "author": "Yuan Deng;Negin Golrezaei;Patrick Jaillet;Jason Cheuk Nam Liang;Vahab Mirrokni", |
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| "title": "Semantic Evolvement Enhanced Graph Autoencoder for Rumor Detection", |
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| "author": "Xiang Tao;Liang Wang;Qiang Liu;Shu Wu;Liang Wang", |
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| "title": "Challenging Low Homophily in Social Recommendation", |
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| "authorids": "~Wei_Jiang16;~Xinyi_Gao1;~Guandong_Xu2;~Tong_Chen8;~Hongzhi_Yin2", |
| "aff": "The University of Queensland;University of Queensland;University of Technology Sydney;The University of Queensland;University of Queensland", |
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| "title": "Fast and Accurate Fair $k$-Center Clustering in Doubling Metrics", |
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| "aff": "University of Padua;University of Padua;University of Padua", |
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| "title": "Tight Competitive and Variance Analyses of Matching Policies in Gig Platforms", |
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| "primary_area": "", |
| "author": "Pan Xu", |
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| "aff": "New Jersey Institute of Technology", |
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| "title": "Enhancing Complex Question Answering over Knowledge Graphs through Evidence Pattern Retrieval", |
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| "author": "Wentao Ding;Jinmao Li;Liangchuan Luo;Yuzhong Qu", |
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| "aff": "Meta Platforms, Inc.;University of Illinois, Urbana-Champaign;University of Illinois Urbana-Champaign;Visa Research;VISA;University of Illinois, Urbana Champaign;\u00c9cole Polytechnique", |
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| "title": "QUIC is not Quick Enough over Fast Internet", |
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| "title": "Back to the Future: Towards Explainable Temporal Reasoning with Large Language Models", |
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| "title": "UniLP: Unified Topology-aware Generative Framework for Link Prediction in Knowledge Graph", |
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| "title": "GAMMA: Graph Neural Network-Based Multi-Bottleneck Localization for Microservices Applications", |
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| "title": "Invariant Graph Learning for Treatment Effect Estimation from Networked Observational Data", |
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| "title": "Reinforcement Learning with Maskable Stock Representation for Portfolio Management in Customizable Stock Pools", |
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| "title": "RicciNet: Deep Clustering via A Riemannian Generative Model", |
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| "title": "Accelerating the decentralized federated learning via manipulating edges", |
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| "author": "Mingyang Zhou;Gang Liu;KeZhong Lu;Rui Mao;Hao Liao", |
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| "title": "Bots, Elections, and Controversies: Twitter Insights from Brazil's Polarised Elections", |
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| "author": "diogo pacheco", |
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| "title": "Decouped Variational Graph Autoencoder for Link Prediction", |
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| "author": "Yoon-Sik Cho", |
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| "aff": "Chung-Ang University", |
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| "title": "M-scan: A Multi-Scenario Causal-driven Adaptive Network for Recommendation", |
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| "author": "Jiachen Zhu;Yichao Wang;Jianghao Lin;Jiarui Qin;Ruiming Tang;Weinan Zhang;Yong Yu", |
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| "aff": "Shanghai Jiaotong University;Huawei Technologies Ltd.;Shanghai Jiaotong University;Shanghai Jiaotong University;Huawei Technologies Ltd.;Shanghai Jiaotong University;Shanghai Jiaotong University", |
| "aff_domain": "sjtu.edu.cn;huawei.com;sjtu.edu.cn;sjtu.edu.cn;huawei.com;sjtu.edu.cn;sjtu.edu.cn", |
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| "title": "Harnessing Multi-role Capabilities of Large Language Models for Open-domain Question Answering", |
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| "aff": "Gaoling School of Artificial Intelligence, Renmin University of China;Nankai University;Beijing University of Posts and Telecommunications;Renmin University of China;King Abdullah University of Science and Technology;University of Electronic Science and Technology of China;Renmin University of China", |
| "aff_domain": "ruc.edu.cn;nankai.edu.cn;bupt.edu.cn;ruc.edu.cn;kaust.edu.sa;uestc.edu.cn;ruc.edu.cn", |
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| "title": "Sublinear-Time Opinion Estimation in the Friedkin--Johnsen Model", |
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| "status": "Poster", |
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| "author": "Stefan Neumann;Yinhao Dong;Pan Peng", |
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| "aff": "University of Science and Technology of China;University of Science and Technology of China", |
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| "title": "Reconciling the accuracy-diversity trade-off in recommendations", |
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| "author": "Kenneth L Peng;Manish Raghavan;Emma Pierson;Jon Kleinberg;Nikhil Garg", |
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| "title": "Characterizing Ethereum Upgradable Smart Contracts and Their Security Implications", |
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| "title": "Identifying Risky Vendors in Cryptocurrency P2P Marketplaces", |
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| "author": "Taro Tsuchiya;Alejandro Cuevas;Nicolas Christin", |
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| "title": "ContraMTD: An Unsupervised Malicious Network Traffic Detection Method based on Contrastive Learning", |
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| "title": "Helen: Optimizing CTR Prediction Models with Frequency-wise Hessian Eigenvalue Regularization", |
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| "title": "Robust Link Prediction over Noisy Hyper-Relational Knowledge Graphs", |
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| "keywords": "Hyper-relation;Noisy knowledge graph;Link Prediction", |
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| "author": "Weijian Yu;Jie Yang;Dingqi Yang", |
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| "aff_domain": "um.edu.mo;tudelft.nl;um.edu.mo", |
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| "title": "Prompt-enhanced Federated Content Representation Learning for Cross-domain Recommendation", |
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| "keywords": "Cross-domain Recommendation;Content Representation;Federated Learning", |
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| "author": "Lei Guo;Ziang Lu;Junliang Yu;Quoc Viet Hung Nguyen;Hongzhi Yin", |
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| "aff": "Shandong Normal University;Shandong Normal University;University of Queensland;Griffith University;University of Queensland", |
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| "title": "Cognitive Personalized Search Integrating Large Language Models with an Efficient Memory Mechanism", |
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| "author": "WONBIN KWEON;Hwanjo Yu", |
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| "title": "PMG : Personalized Multimodal Response Generation with Large Language Models", |
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| "title": "Fair Graph Representation Learning via Sensitive Attribute Disentanglement", |
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| "author": "Yuchang Zhu;Jintang Li;Zibin Zheng;Liang Chen", |
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| "aff": "SUN YAT-SEN UNIVERSITY;Sun Yat-sen University;SUN YAT-SEN UNIVERSITY", |
| "aff_domain": "sysu.edu.cn;sysu.edu.cn;sysu.edu.cn", |
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| "title": "Divide, Conquer, and Coalesce: Meta Parallel Graph Neural Network for IoT Intrusion Detection at Scale", |
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| "status": "Poster", |
| "keywords": "Network intrusion detection;graph neural network;offline reinforcement learning;scalability", |
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| "author": "Hua Ding;Lixing Chen;Shenghong Li;Yang Bai;Pan Zhou;Zhe Qu", |
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| "aff": "Shanghai Jiaotong University;Shanghai Jiaotong University;Shanghai Jiaotong University;Shanghai Jiaotong University;Huazhong University of Science and Technology;Central South University", |
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| "id": "thJGSQcS5y", |
| "title": "(In)Security of File Uploads in Node.js", |
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| "title": "Bridging the Space Gap: Unifying Geometry Knowledge Graph Embedding with Optimal Transport", |
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| "title": "LARA: A Light and Anti-overfitting Retraining Approach for Unsupervised Anomaly Detection", |
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| "author": "Feiyi Chen;Zhen Qin;Mengchu Zhou;Yingying ZHANG;Shuiguang Deng;Lunting Fan;Guansong Pang;Qingsong Wen", |
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| "aff": "Zhejiang University;Zhejiang University;New Jersey Institute of Technology;Alibaba Group;Zhejiang University;Alibaba Group;Singapore Management University;Squirrel Ai Learning", |
| "aff_domain": "zju.edu.cn;zju.edu.cn;njit.edu;alibaba-inc.com;zju.edu.cn;alibaba-inc.com;smu.edu.sg;squirrelai.com", |
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| "title": "The Matter of Captchas: An Analysis of a Brittle Security Feature on the Modern Web", |
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| "author": "Behzad Ousat;Esteban Schafir;Duc C Hoang;Mohammad Ali Tofighi;Cuong V Nguyen;Sajjad Arshad;Selcuk Uluagac;Amin Kharraz", |
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| "aff": "Florida International University;Florida International University;National University of Singapore;Florida International University;Durham University;Florida International University", |
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| "title": "GRASP: Hardening Serverless Applications through Graph Reachability Analysis of Security Policies", |
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| "author": "Isaac Polinsky;Pubali Datta;Adam Bates;William Enck", |
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| "title": "IME: Integrating Multi-curvature Shared and Specific Embedding for Temporal Knowledge Graph Completion", |
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| "author": "Jiapu Wang;Zheng Cui;Boyue Wang;Shirui Pan;Junbin Gao;Baocai Yin;Wen Gao", |
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| "aff": "Beijing University of Technology;Beijing University of Technology;Griffith University;University of Sydney;Beijing University of Technology;Beijing University of Technology", |
| "aff_domain": "bjut.edu;bjut.edu.cn;griffith.edu.au;sydney.edu.au;bjut.edu.cn;bjut.edu.cn", |
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| { |
| "id": "zyWwZrItIH", |
| "title": "When Imbalance Meets Imbalance: Structure-driven Learning for Imbalanced Graph Classification", |
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| "keywords": "graph classification;class imbalance;structural imbalance;augmentation;graph of graphs", |
| "primary_area": "", |
| "author": "Wei Xu;Pengkun Wang;Zhe Zhao;Binwu Wang;Xu Wang;Yang Wang", |
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| "aff": "University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China;University of Science and Technology of China", |
| "aff_domain": "ustc.edu.cn;ustc.edu.cn;ustc.edu.cn;ustc.edu.cn;ustc.edu.cn;ustc.edu.cn", |
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