PRISM: Personalized Recommendation via Information Synergy Module
By: Xinyi Zhang , Yutong Li , Peijie Sun and more
Potential Business Impact:
Finds what you like by combining item details.
Multimodal sequential recommendation (MSR) leverages diverse item modalities to improve recommendation accuracy, while achieving effective and adaptive fusion remains challenging. Existing MSR models often overlook synergistic information that emerges only through modality combinations. Moreover, they typically assume a fixed importance for different modality interactions across users. To address these limitations, we propose \textbf{P}ersonalized \textbf{R}ecommend-ation via \textbf{I}nformation \textbf{S}ynergy \textbf{M}odule (PRISM), a plug-and-play framework for sequential recommendation (SR). PRISM explicitly decomposes multimodal information into unique, redundant, and synergistic components through an Interaction Expert Layer and dynamically weights them via an Adaptive Fusion Layer guided by user preferences. This information-theoretic design enables fine-grained disentanglement and personalized fusion of multimodal signals. Extensive experiments on four datasets and three SR backbones demonstrate its effectiveness and versatility. The code is available at https://github.com/YutongLi2024/PRISM.
Similar Papers
Causal Inspired Multi Modal Recommendation
Information Retrieval
Fixes online shopping picks by ignoring fake trends.
A Remarkably Efficient Paradigm to Multimodal Large Language Models for Sequential Recommendation
Information Retrieval
Makes online shopping suggestions faster and smarter.
Semantic Item Graph Enhancement for Multimodal Recommendation
Information Retrieval
Helps online stores show you better stuff.