--- task_categories: - graph-ml --- # LoReC: Rethinking Large Language Models for Graph Data Analysis This repository contains data associated with the paper [LoReC: Rethinking Large Language Models for Graph Data Analysis](https://huggingface.co/papers/2604.17897). [**GitHub Repository**](https://github.com/Git-King-Zhan/LoReC) ## Introduction LoReC (Look, Remember, Contrast) is a novel plug-and-play method for the GraphLLM paradigm. It enhances the understanding of graph data in Large Language Models through three stages: 1. **Look**: Redistributing attention to the graph. 2. **Remember**: Re-injecting graph information into the Feed-Forward Network (FFN). 3. **Contrast**: Rectifying the vanilla logits produced in the decoding process. This method improves performance on graph-related tasks without requiring extra fine-tuning. ## Usage The graph data in this project is typically stored in PyTorch Geometric (PyG) format within `.pt` files. You can load the data as follows: ```python import torch as th # Load the graph data graph_data = th.load('all_graph_data.pt') # Access specific dataset components (e.g., 'arxiv') arxiv_graph = graph_data['arxiv'] ``` ## Citation ```bibtex @misc{zhan2026lorecrethinkinglargelanguage, title={LoReC: Rethinking Large Language Models for Graph Data Analysis}, author={Hongyu Zhan and Qixin Wang and Yusen Tan and Haitao Yu and Jingbo Zhou and Shuai Chen and Jia Li and Xiao Tan and Jun Xia}, year={2026}, eprint={2604.17897}, archivePrefix={arXiv}, primaryClass={cs.LG}, url={https://arxiv.org/abs/2604.17897}, } ```