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Personalized Beyond-accuracy Calibration in Recommendation

Published: 05 August 2024 Publication History

Abstract

Recommender systems usually aim to optimize accuracy in a supervised setting. Due to various data biases, they often fail to enhance other critical qualities that go beyond accuracy, such as diversity, novelty, and serendipity. Prior studies focus on addressing the bias in beyond-accuracy metrics from the provider's perspective, such as increasing the overall diversity of recommendations to combat popularity bias. In this work, we take a user-centric approach to this problem and demonstrate that users have distinct preferences for beyond-accuracy metrics. We hypothesize that users have an implicit behavioral model that goes beyond optimizing their choices only for accuracy. For instance, we assume that a user's purchase behavior is a mix of items that are more familiar to the user (optimizing for accuracy), and new items that are aimed for exploration (optimizing for novelty). We argue that a recommender system should reflect users' interest in such beyond-accuracy metrics. This perspective allows for a more holistic understanding of users' behavior and preferences leading to more fine-grained personalized recommendations. To this end, we propose a post-ranking greedy optimization algorithm that ensures recommendations are not only accurate but also meet users' beyond-accuracy preferences. Through extensive experiments, we demonstrate our proposed method's ability to balance the trade-off between ranking accuracy and user-centric beyond-accuracy preferences.

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  • (2025)Considering Time and Feature Entropy in Calibrated RecommendationsACM Transactions on Intelligent Systems and Technology10.1145/3716858Online publication date: 13-Feb-2025

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    cover image ACM Conferences
    ICTIR '24: Proceedings of the 2024 ACM SIGIR International Conference on Theory of Information Retrieval
    August 2024
    267 pages
    ISBN:9798400706813
    DOI:10.1145/3664190
    This work is licensed under a Creative Commons Attribution International 4.0 License.

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    Published: 05 August 2024

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    Author Tags

    1. calibration
    2. fairness
    3. re-ranking
    4. recommender systems

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    • (2025)Considering Time and Feature Entropy in Calibrated RecommendationsACM Transactions on Intelligent Systems and Technology10.1145/3716858Online publication date: 13-Feb-2025

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