Shannan Yan
2026
RealChart2Code: Bridging the Gap in Real-World Chart-to-Code Generation via Multi-Task Evaluation
Jiajun Zhang | Yuying Li | Zhixun Li | Xingyu Guo | Jingzhuo Wu | Leqi Zheng | Yiran Yang | Jianke Zhang | Qingbin Li | Shannan Yan | Changguo Jia | Junfei Wu | Zilei Wang | Qiang Liu | Liang Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
Jiajun Zhang | Yuying Li | Zhixun Li | Xingyu Guo | Jingzhuo Wu | Leqi Zheng | Yiran Yang | Jianke Zhang | Qingbin Li | Shannan Yan | Changguo Jia | Junfei Wu | Zilei Wang | Qiang Liu | Liang Wang
Proceedings of the 64th Annual Meeting of the Association for Computational Linguistics (Volume 1: Long Papers)
2025
LAGCL4Rec: When LLMs Activate Interactions Potential in Graph Contrastive Learning for Recommendation
Leqi Zheng | Chaokun Wang | Canzhi Chen | Jiajun Zhang | Cheng Wu | Zixin Song | Shannan Yan | Ziyang Liu | Hongwei Li
Findings of the Association for Computational Linguistics: EMNLP 2025
Leqi Zheng | Chaokun Wang | Canzhi Chen | Jiajun Zhang | Cheng Wu | Zixin Song | Shannan Yan | Ziyang Liu | Hongwei Li
Findings of the Association for Computational Linguistics: EMNLP 2025
A core barrier preventing recommender systems from reaching their full potential lies in the inherent limitations of user-item interaction data: (1) Sparse user-item interactions, making it difficult to learn reliable user preferences; (2) Traditional contrastive learning methods often treat negative samples as equally hard or easy, ignoring the informative semantic difficulty during training. (3) Modern LLM-based recommender systems, on the other hand, discard all negative feedback, leading to unbalanced preference modeling. To address these issues, we propose LAGCL4Rec, a framework leveraging Large Language Models to Activate interactions in Graph Contrastive Learning for Recommendation. Our approach operates through three stages: (i) Data-Level: augmenting sparse interactions with balanced positive and negative samples using LLM-enriched profiles; (ii) Rank-Level: assessing semantic difficulty of negative samples through LLM-based grouping for fine-grained contrastive learning; and (iii) Rerank-Level: reasoning over augmented historical interactions for personalized recommendations. Theoretical analysis proves that LAGCL4Rec achieves effective information utilization with minimal computational overhead. Experiments across multiple benchmarks confirm our method consistently outperforms state-of-the-art baselines.