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Pareto Invariant Representation Learning for Multimedia Recommendation

Published: 27 October 2023 Publication History

Abstract

Multimedia recommendation involves personalized ranking tasks, where multimedia content is usually represented using a generic encoder. However, these generic representations introduce spurious correlations that fail to reveal users' true preferences. Existing works attempt to alleviate this problem by learning invariant representations, but overlook the balance between independent and identically distributed (IID) and out-of-distribution (OOD) generalization. In this paper, we propose a framework called Pareto Invariant Representation Learning (PaInvRL) to mitigate the impact of spurious correlations from an IID-OOD multi-objective optimization perspective, by learning invariant representations (intrinsic factors that attract user attention) and variant representations (other factors) simultaneously. Specifically, PaInvRL includes three iteratively executed modules: (i) heterogeneous identification module, which identifies the heterogeneous environments to reflect distributional shifts for user-item interactions; (ii) invariant mask generation module, which learns invariant masks based on the Pareto-optimal solutions that minimize the adaptive weighted Invariant Risk Minimization (IRM) and Empirical Risk (ERM) losses; (iii) convert module, which generates both variant representations and item-invariant representations for training a multi-modal recommendation model that mitigates spurious correlations and balances the generalization performance within and cross the environmental distributions. We compare the proposed PaInvRL with state-of-the-art recommendation models on three public multimedia recommendation datasets (Movielens, Tiktok, and Kwai), and the experimental results validate the effectiveness of PaInvRL for both within-and cross-environmental learning.

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Cited By

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  • (2024)Cluster-driven Personalized Federated Recommendation with Interest-aware Graph Convolution Network for MultimediaProceedings of the 32nd ACM International Conference on Multimedia10.1145/3664647.3680788(5614-5622)Online publication date: 28-Oct-2024
  • (2024)Uncovering the Propensity Identification Problem in Debiased Recommendations2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00056(653-666)Online publication date: 13-May-2024
  • (2023)Removing hidden confounding in recommendationProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3668502(54614-54626)Online publication date: 10-Dec-2023
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    cover image ACM Conferences
    MM '23: Proceedings of the 31st ACM International Conference on Multimedia
    October 2023
    9913 pages
    ISBN:9798400701085
    DOI:10.1145/3581783
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    Published: 27 October 2023

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    Author Tags

    1. invariant learning
    2. multi-objective optimization
    3. multimedia recommendation
    4. multimedia representation learning

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    October 29 - November 3, 2023
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    View all
    • (2024)Cluster-driven Personalized Federated Recommendation with Interest-aware Graph Convolution Network for MultimediaProceedings of the 32nd ACM International Conference on Multimedia10.1145/3664647.3680788(5614-5622)Online publication date: 28-Oct-2024
    • (2024)Uncovering the Propensity Identification Problem in Debiased Recommendations2024 IEEE 40th International Conference on Data Engineering (ICDE)10.1109/ICDE60146.2024.00056(653-666)Online publication date: 13-May-2024
    • (2023)Removing hidden confounding in recommendationProceedings of the 37th International Conference on Neural Information Processing Systems10.5555/3666122.3668502(54614-54626)Online publication date: 10-Dec-2023
    • (2023)CounterCLR: Counterfactual Contrastive Learning with Non-random Missing Data in Recommendation2023 IEEE International Conference on Data Mining (ICDM)10.1109/ICDM58522.2023.00174(1355-1360)Online publication date: 1-Dec-2023

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