cs.AI updates on arXiv.org 09月25日
MRdIB:多模态推荐系统的新框架
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本文提出了一种名为MRdIB的新框架,用于多模态推荐系统。该框架通过压缩输入表示,过滤掉任务无关的噪声,同时保留丰富的语义信息,以提升推荐系统的性能。

arXiv:2509.20225v1 Announce Type: cross Abstract: Multimodal data has significantly advanced recommendation systems by integrating diverse information sources to model user preferences and item characteristics. However, these systems often struggle with redundant and irrelevant information, which can degrade performance. Most existing methods either fuse multimodal information directly or use rigid architectural separation for disentanglement, failing to adequately filter noise and model the complex interplay between modalities. To address these challenges, we propose a novel framework, the Multimodal Representation-disentangled Information Bottleneck (MRdIB). Concretely, we first employ a Multimodal Information Bottleneck to compress the input representations, effectively filtering out task-irrelevant noise while preserving rich semantic information. Then, we decompose the information based on its relationship with the recommendation target into unique, redundant, and synergistic components. We achieve this decomposition with a series of constraints: a unique information learning objective to preserve modality-unique signals, a redundant information learning objective to minimize overlap, and a synergistic information learning objective to capture emergent information. By optimizing these objectives, MRdIB guides a model to learn more powerful and disentangled representations. Extensive experiments on several competitive models and three benchmark datasets demonstrate the effectiveness and versatility of our MRdIB in enhancing multimodal recommendation.

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多模态推荐 信息瓶颈 MRdIB框架 性能提升 噪声过滤
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