paper_id stringlengths 10 10 | title stringlengths 6 214 | content stringlengths 5.3k 106k | metadata stringlengths 864 1.75k | label stringclasses 2
values | references listlengths 1 4 |
|---|---|---|---|---|---|
2511.08364 | DPRM: A Dual Implicit Process Reward Model in Multi-Hop Question Answering |
# DPRM: A DUAL IMPLICIT PROCESS REWARD MODEL IN MULTI-HOP QUESTION ANSWERING
Anonymous Submission
Anonymous Institute
# ABSTRACT
In multi-hop question answering (MHQA) tasks, Chain of Thought (CoT) improves the quality of generation by guiding large language models (LLMs) through multi-step reasoning, and Knowled... | {"arxiv_id": "2511.08364", "answer": "Accept", "venue": "aaai", "conference_year": 2026, "arxiv_year": 2025, "decision": "accept", "training_label": "accept", "title": "DPRM: A Dual Implicit Process Reward Model in Multi-Hop Question Answering", "submission_date": "2025-11-11", "body_pages": 7.0, "anonymization_verifie... | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2411.12877 | The Illusion of Empathy: How AI Chatbots Shape Conversation Perception |
# THE ILLUSION OF EMPATHY: HOW AI CHATBOTS SHAPE CONVERSATION PERCEPTION
Anonymous Submission
Anonymous Institute
# ABSTRACT
As AI chatbots increasingly incorporate empathy, understanding user-centered perceptions of chatbot empathy and its impact on conversation quality remains essential yet underexplored. This ... | {"arxiv_id": "2411.12877", "answer": "Accept", "venue": "aaai", "conference_year": 2025, "arxiv_year": 2024, "decision": "accept", "training_label": "accept", "citations": 1, "pct_citation": 0.6699, "title": "The Illusion of Empathy: How AI Chatbots Shape Conversation Perception", "submission_date": "2024-11-19", "body... | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2511.17910 | L2V-CoT: Cross-Modal Transfer of Chain-of-Thought Reasoning via Latent Intervention |
# L2V-COT: CROSS-MODAL TRANSFER OF CHAIN-OF-THOUGHT REASONING VIA LATENT INTERVENTION
Anonymous Submission
Anonymous Institute
# ABSTRACT
Recently, Chain-of-Thought (CoT) reasoning has significantly enhanced the capabilities of large language models (LLMs), but Vision-Language Models (VLMs) still struggle with mu... | {"arxiv_id": "2511.17910", "answer": "Accept", "venue": "aaai", "conference_year": 2026, "arxiv_year": 2025, "decision": "accept", "training_label": "accept", "title": "L2V-CoT: Cross-Modal Transfer of Chain-of-Thought Reasoning via Latent Intervention", "submission_date": "2025-11-22", "body_pages": 6.0, "anonymizatio... | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2511.12075 | Treatment Stitching with Schr\"odinger Bridge for Enhancing Offline Reinforcement Learning in Adaptive Treatment Strategies |
# TREATMENT STITCHING WITH SCHRÖDINGER BRIDGE FOR ENHANCING OFFLINE REINFORCEMENT LEARNING IN ADAPTIVE TREATMENT STRATEGIES
Anonymous Submission
Anonymous Institute
# ABSTRACT
Adaptive treatment strategies (ATS) are sequential decision-making processes that enable personalized care by dynamically adjusting treatm... | {"arxiv_id": "2511.12075", "answer": "Accept", "venue": "aaai", "conference_year": 2026, "arxiv_year": 2025, "decision": "accept", "training_label": "accept", "title": "Treatment Stitching with Schr\\\"odinger Bridge for Enhancing Offline Reinforcement Learning in Adaptive Treatment Strategies", "submission_date": "202... | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2602.03615 | KTV: Keyframes and Key Tokens Selection for Efficient Training-Free Video LLMs |
# KTV: KEYFRAMES AND KEY TOKENS SELECTION FOR EFFICIENT TRAINING-FREE VIDEO LLMS
Anonymous Submission
Anonymous Institute
# ABSTRACT
Training-free video understanding leverages the strong image comprehension capabilities of pre-trained vision language models (VLMs) by treating a video as a sequence of static fram... | {"arxiv_id": "2602.03615", "answer": "Accept", "venue": "aaai", "conference_year": 2026, "arxiv_year": 2026, "decision": "accept", "training_label": "accept", "title": "KTV: Keyframes and Key Tokens Selection for Efficient Training-Free Video LLMs", "submission_date": "2026-02-03", "body_pages": 6.0, "anonymization_ver... | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2412.10712 | Towards Effective, Efficient and Unsupervised Social Event Detection in
the Hyperbolic Space | "\n\n# TOWARDS EFFECTIVE, EFFICIENT AND UNSUPERVISED SOCIAL EVENT DETECTION IN THE HYPERBOLIC SPACE\(...TRUNCATED) | "{\"arxiv_id\": \"2412.10712\", \"answer\": \"Accept\", \"venue\": \"aaai\", \"conference_year\": 20(...TRUNCATED) | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2002.03082 | RL-Duet: Online Music Accompaniment Generation Using Deep Reinforcement
Learning | "\n\n# RL-DUET: ONLINE MUSIC ACCOMPANIMENT GENERATION USING DEEP REINFORCEMENT LEARNING\n\nAnonymous(...TRUNCATED) | "{\"arxiv_id\": \"2002.03082\", \"answer\": \"Accept\", \"venue\": \"aaai\", \"conference_year\": 20(...TRUNCATED) | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv",
"test"
]
] |
2412.18844 | "Improving Integrated Gradient-based Transferable Adversarial Examples by\n Refining the Integratio(...TRUNCATED) | "\n\n# IMPROVING INTEGRATED GRADIENT-BASED TRANSFERABLE ADVERSARIAL EXAMPLES BY REFINING THE INTEGRA(...TRUNCATED) | "{\"arxiv_id\": \"2412.18844\", \"answer\": \"Accept\", \"venue\": \"aaai\", \"conference_year\": 20(...TRUNCATED) | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
2203.02172 | Semantic-Aware Representation Blending for Multi-Label Image Recognition
with Partial Labels | "\n\n# SEMANTIC-AWARE REPRESENTATION BLENDING FOR MULTI-LABEL IMAGE RECOGNITION WITH PARTIAL LABELS\(...TRUNCATED) | "{\"arxiv_id\": \"2203.02172\", \"answer\": \"Accept\", \"venue\": \"aaai\", \"conference_year\": 20(...TRUNCATED) | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv",
"test"
]
] |
2511.11693 | Value-Aligned Prompt Moderation via Zero-Shot Agentic Rewriting for Safe Image Generation | "\n\n# VALUE-ALIGNED PROMPT MODERATION VIA ZERO-SHOT AGENTIC REWRITING FOR SAFE IMAGE GENERATION\n\n(...TRUNCATED) | "{\"arxiv_id\": \"2511.11693\", \"answer\": \"Accept\", \"venue\": \"aaai\", \"conference_year\": 20(...TRUNCATED) | Accept | [
[
"arxiv-mini",
"test"
],
[
"arxiv-mini",
"test_yup"
],
[
"arxiv",
"test"
],
[
"arxiv",
"test_yup"
]
] |
PaperLens-Text
Text version of the OpenReview-ICLR and arXiv PaperLens datasets.
Each row is one unique paper. We release all extracted papers — not every paper here is used in our downstream training/eval sets. The papers that are used are denoted by the references field, which lists every internal (release_name, release_split) pair the paper belongs to (a single paper can belong to multiple). reconstruction.py reads this field to materialize the original sharegpt data.json for any of the ~20 publishable text keys.
Configs (subsets)
arxiv— papers from arxiv (per_venue + 21k families + residual + the arxiv side of combined).openreview-iclr— papers from ICLR via OpenReview (balanced_original + max_rejects + train_50pct/75pct + the iclr side of combined).
from datasets import load_dataset
ds_arxiv = load_dataset("skonan/PaperLens-Text", "arxiv", split="papers")
ds_iclr = load_dataset("skonan/PaperLens-Text", "openreview-iclr", split="papers")
Schema
| field | type | description |
|---|---|---|
paper_id |
string |
arXiv id or OpenReview submission id |
title |
string |
paper title |
content |
string |
prompt-stripped body (the full paper body in markdown) |
metadata |
string |
JSON blob — venue, year, authors, ratings, decision, … |
label |
string |
"Accept" or "Reject" |
references |
list<list<string>> |
each entry is [release_name, release_split] — the internal splits this paper belongs to |
Reconstructing the sharegpt data.json files
reconstruction.py rebuilds any of the publishable internal keys (e.g. arxiv_50_50_21k_text_..._y24up_test) byte-identically from this dataset. Setup + run:
git clone https://github.com/zlab-princeton/PaperLens.git
cd PaperLens/paperlens-training-and-inference
uv sync
# arxiv training set
uv run python scripts/reconstruction.py \
--hf_text_repo skonan/PaperLens-Text \
--dataset_keys arxiv_50_50_balanced_per_venue_text_wmetadata_filtered24480_train
# openreview-iclr training set
uv run python scripts/reconstruction.py \
--hf_text_repo skonan/PaperLens-Text \
--dataset_keys iclr_2020_2023_2025_2026_85_5_10_balanced_original_text_labelfix_v7_filtered_train
Reconstructed files land in ./data/ by default (override with --data_root <path>): data/<dataset_key>/data.json (sharegpt rows) and data/dataset_info.json (LlamaFactory entry).
The release ships a manifest.json sidecar mapping each internal dataset_info.json key → (release_name, release_split, columns, file_name), so reconstruction reproduces conversations, _metadata, accept_reject_label (where applicable).
License & citation
License: see the PaperLens collection.
@misc{konan2026paperlens,
title = {PaperLens: How Predictable Is Paper Acceptance?},
author = {Konan, Sachin and Liu, Jonathan and Liu, Zhuang},
year = {2026},
institution = {Princeton University}
}
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