Sequential Recommendation
Sequential recommendation aims to predict users' next interactions by analyzing their historical behavior sequences, focusing on capturing dynamic preferences and long-term patterns. Current research heavily utilizes transformer-based architectures, large language models (LLMs), and graph neural networks (GNNs), often incorporating techniques like contrastive learning, test-time training, and knowledge distillation to improve accuracy and efficiency, particularly for large-scale datasets. This field is crucial for personalized recommendations in various applications, driving improvements in user experience and business outcomes through more accurate and timely predictions. Addressing challenges like scalability, noise in user data, and the effective integration of diverse data sources (e.g., textual item descriptions, collaborative filtering signals) remains a key focus.
Papers
Does It Look Sequential? An Analysis of Datasets for Evaluation of Sequential Recommendations
Anton Klenitskiy, Anna Volodkevich, Anton Pembek, Alexey Vasilev
Bidirectional Gated Mamba for Sequential Recommendation
Ziwei Liu, Qidong Liu, Yejing Wang, Wanyu Wang, Pengyue Jia, Maolin Wang, Zitao Liu, Yi Chang, Xiangyu Zhao
LLM4DSR: Leveraing Large Language Model for Denoising Sequential Recommendation
Bohao Wang, Feng Liu, Jiawei Chen, Yudi Wu, Xingyu Lou, Jun Wang, Yan Feng, Chun Chen, Can Wang
An Efficient Continuous Control Perspective for Reinforcement-Learning-based Sequential Recommendation
Jun Wang, Likang Wu, Qi Liu, Yu Yang