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HyperSoRec: Exploiting Hyperbolic User and Item Representations with Multiple Aspects for Social-aware Recommendation

Published: 27 September 2021 Publication History
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  • Abstract

    Social recommendation has achieved great success in many domains including e-commerce and location-based social networks. Existing methods usually explore the user-item interactions or user-user connections to predict users’ preference behaviors. However, they usually learn both user and item representations in Euclidean space, which has large limitations for exploring the latent hierarchical property in the data. In this article, we study a novel problem of hyperbolic social recommendation, where we aim to learn the compact but strong representations for both users and items. Meanwhile, this work also addresses two critical domain-issues, which are under-explored. First, users often make trade-offs with multiple underlying aspect factors to make decisions during their interactions with items. Second, users generally build connections with others in terms of different aspects, which produces different influences with aspects in social network. To this end, we propose a novel graph neural network (GNN) framework with multiple aspect learning, namely, HyperSoRec. Specifically, we first embed all users, items, and aspects into hyperbolic space with superior representations to ensure their hierarchical properties. Then, we adapt a GNN with novel multi-aspect message-passing-receiving mechanism to capture different influences among users. Next, to characterize the multi-aspect interactions of users on items, we propose an adaptive hyperbolic metric learning method by introducing learnable interactive relations among different aspects. Finally, we utilize the hyperbolic translational distance to measure the plausibility in each user-item pair for recommendation. Experimental results on two public datasets clearly demonstrate that our HyperSoRec not only achieves significant improvement for recommendation performance but also shows better representation ability in hyperbolic space with strong robustness and reliability.

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    cover image ACM Transactions on Information Systems
    ACM Transactions on Information Systems  Volume 40, Issue 2
    April 2022
    587 pages
    ISSN:1046-8188
    EISSN:1558-2868
    DOI:10.1145/3484931
    Issue’s Table of Contents
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    Publication History

    Published: 27 September 2021
    Accepted: 01 April 2021
    Revised: 01 March 2021
    Received: 01 October 2020
    Published in TOIS Volume 40, Issue 2

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    Author Tags

    1. Hyperbolic social recommendation
    2. multi-aspect user influence
    3. multi-aspect item interaction

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    Funding Sources

    • National Key Research and Development Program of China
    • National Natural Science Foundation of China
    • NSF
    • China Scholarship Council

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