SLSREC:基于自监督对比学习的用户长短期兴趣自适应融合模型 / SLSREC: Self-Supervised Contrastive Learning for Adaptive Fusion of Long- and Short-Term User Interests
1️⃣ 一句话总结
这篇论文提出了一个名为SLSREC的新模型,它通过自监督对比学习技术,将用户长期偏好和短期意图分开建模并自适应融合,从而更精准地捕捉用户兴趣的动态变化,显著提升了推荐系统的性能。
User interests typically encompass both long-term preferences and short-term intentions, reflecting the dynamic nature of user behaviors across different timeframes. The uneven temporal distribution of user interactions highlights the evolving patterns of interests, making it challenging to accurately capture shifts in interests using comprehensive historical behaviors. To address this, we propose SLSRec, a novel Session-based model with the fusion of Long- and Short-term Recommendations that effectively captures the temporal dynamics of user interests by segmenting historical behaviors over time. Unlike conventional models that combine long- and short-term user interests into a single representation, compromising recommendation accuracy, SLSRec utilizes a self-supervised learning framework to disentangle these two types of interests. A contrastive learning strategy is introduced to ensure accurate calibration of long- and short-term interest representations. Additionally, an attention-based fusion network is designed to adaptively aggregate interest representations, optimizing their integration to enhance recommendation performance. Extensive experiments on three public benchmark datasets demonstrate that SLSRec consistently outperforms state-of-the-art models while exhibiting superior robustness across various this http URL will release all source code upon acceptance.
SLSREC:基于自监督对比学习的用户长短期兴趣自适应融合模型 / SLSREC: Self-Supervised Contrastive Learning for Adaptive Fusion of Long- and Short-Term User Interests
这篇论文提出了一个名为SLSREC的新模型,它通过自监督对比学习技术,将用户长期偏好和短期意图分开建模并自适应融合,从而更精准地捕捉用户兴趣的动态变化,显著提升了推荐系统的性能。
源自 arXiv: 2604.04530