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Exploring the Side-Information Fusion for Sequential Recommendation | IEEE Journals & Magazine | IEEE Xplore

Exploring the Side-Information Fusion for Sequential Recommendation


An illustration of two types of side-information, where both users purchased the same item (i.e., MacBook). The item attribute remains static relative to the item ID, whe...

Abstract:

Side information fusion for sequential recommendation aims to mitigate the data sparsity problems by leveraging the additional knowledge besides item ID. While most state...Show More

Abstract:

Side information fusion for sequential recommendation aims to mitigate the data sparsity problems by leveraging the additional knowledge besides item ID. While most state-of-the-art methods devised elaborate fusion methods to incorporate side-information, they overlooked that there are distinct characteristics of the side-information, which can be grouped into two types: item attribute (e.g., category and brand) and user behavior (e.g., position and rating). In this paper, we argue that attribute information and behavior information are fundamentally different in relation to the item. The former is inherent to the item, whereas the latter is not. Based on this intuition, we systematically analyzed the previous fusion approach and introduced a comprehensive framework for two types of side information. Finally, we devise self-supervised objectives fitting for each type of side-information in a multi-task training scheme. To validate the effectiveness of our proposed method, we conduct experiments across various domains.
An illustration of two types of side-information, where both users purchased the same item (i.e., MacBook). The item attribute remains static relative to the item ID, whe...
Published in: IEEE Access ( Volume: 13)
Page(s): 8839 - 8850
Date of Publication: 03 January 2025
Electronic ISSN: 2169-3536

Funding Agency:


References

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