Abstract:
The current sequential recommendation systems mainly focus on mining information related to users to make personalized recommendations. However, there are two subjects in...Show MoreMetadata
Abstract:
The current sequential recommendation systems mainly focus on mining information related to users to make personalized recommendations. However, there are two subjects in the user historical interaction sequence: users and items. We believe that mining sequence information only from the users’ perspective is limited, ignoring effective information from the perspective of items, which is not conducive to alleviating the data sparsity problem. To explore potential links between items and use them for recommendation, we propose Intent-guided Bilateral Long and Short-Term Information Mining with Contrastive Learning for Sequential Recommendation (IBLSRec), which interpretively integrates three kinds of information mined from the sequence: user preferences, user intentions, and potential relationships between items. Specifically, we model the potential relationships between interactive items from a long-term and short-term perspective. The short-term relationship between items is regarded as noise; the long-term relationship between items is regarded as a stable common relationship and integrated with the user's personalized preferences. In addition, user intent is used to guide the modeling of user preferences to refine the representation of user preferences further. A large number of experiments on four real data sets validate the superiority of our model.
Published in: IEEE Transactions on Services Computing ( Volume: 18, Issue: 1, Jan.-Feb. 2025)
Funding Agency:
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Self-supervised Learning ,
- Information Mining ,
- Short-term Information ,
- Sequential Recommendation ,
- Intimacy ,
- Sequence Information ,
- Sparse Data ,
- Recommender Systems ,
- User Preferences ,
- Usage Intention ,
- History Of Interactions ,
- Historical Sequence ,
- Short-term Relationships ,
- Interaction Item ,
- Short-term Perspective ,
- Convolutional Neural Network ,
- Batch Size ,
- Human-computer Interaction ,
- Input Sequence ,
- Representation Learning ,
- User Representation ,
- Graph Neural Networks ,
- User Interest ,
- Auxiliary Task ,
- Sequence Of Items ,
- Representational Similarity ,
- Contrastive Module ,
- Recommendation Model ,
- Benchmark Model ,
- Gated Recurrent Unit
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Self-supervised Learning ,
- Information Mining ,
- Short-term Information ,
- Sequential Recommendation ,
- Intimacy ,
- Sequence Information ,
- Sparse Data ,
- Recommender Systems ,
- User Preferences ,
- Usage Intention ,
- History Of Interactions ,
- Historical Sequence ,
- Short-term Relationships ,
- Interaction Item ,
- Short-term Perspective ,
- Convolutional Neural Network ,
- Batch Size ,
- Human-computer Interaction ,
- Input Sequence ,
- Representation Learning ,
- User Representation ,
- Graph Neural Networks ,
- User Interest ,
- Auxiliary Task ,
- Sequence Of Items ,
- Representational Similarity ,
- Contrastive Module ,
- Recommendation Model ,
- Benchmark Model ,
- Gated Recurrent Unit
- Author Keywords