TL;DR
This paper introduces MEGCF, a novel multimodal recommendation model that aligns feature extraction with user interest modeling to improve personalized recommendations by capturing semantic correlations.
Contribution
The paper proposes a new approach to match multimodal feature extraction with user interest modeling, reducing noise and enhancing embedding quality for personalized recommendations.
Findings
Improved recommendation accuracy over baseline models.
Effective semantic entity extraction enhances user preference modeling.
Graph convolution captures high-order semantic and collaborative signals.
Abstract
In most E-commerce platforms, whether the displayed items trigger the user's interest largely depends on their most eye-catching multimodal content. Consequently, increasing efforts focus on modeling multimodal user preference, and the pressing paradigm is to incorporate complete multimodal deep features of the items into the recommendation module. However, the existing studies ignore the mismatch problem between multimodal feature extraction (MFE) and user interest modeling (UIM). That is, MFE and UIM have different emphases. Specifically, MFE is migrated from and adapted to upstream tasks such as image classification. In addition, it is mainly a content-oriented and non-personalized process, while UIM, with its greater focus on understanding user interaction, is essentially a user-oriented and personalized process. Therefore, the direct incorporation of MFE into UIM for purely…
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Taxonomy
MethodsConvolution
