IRAIAug 14, 2023

MM-GEF: Multi-modal representation meet collaborative filtering

arXiv:2308.07222v22 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses a specific bottleneck in multi-modal recommendation for e-commerce by integrating collaborative signals with multi-modal features, representing an incremental advancement.

The paper tackles the problem of incorporating collaborative item-user-item relationships into multi-modal feature-based item structures in recommender systems, achieving systematic improvements over state-of-the-art methods on four datasets.

In modern e-commerce, item content features in various modalities offer accurate yet comprehensive information to recommender systems. The majority of previous work either focuses on learning effective item representation during modelling user-item interactions, or exploring item-item relationships by analysing multi-modal features. Those methods, however, fail to incorporate the collaborative item-user-item relationships into the multi-modal feature-based item structure. In this work, we propose a graph-based item structure enhancement method MM-GEF: Multi-Modal recommendation with Graph Early-Fusion, which effectively combines the latent item structure underlying multi-modal contents with the collaborative signals. Instead of processing the content feature in different modalities separately, we show that the early-fusion of multi-modal features provides significant improvement. MM-GEF learns refined item representations by injecting structural information obtained from both multi-modal and collaborative signals. Through extensive experiments on four publicly available datasets, we demonstrate systematical improvements of our method over state-of-the-art multi-modal recommendation methods.

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