Calibrating the Predictions for Top-N Recommendations

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Abstract

Well-calibrated predictions of user preferences are essential for many applications. Since recommender systems typically select the top-N items for users, calibration for those top-N items, rather than for all items, is important. We show that previous calibration methods result in miscalibrated predictions for the top-N items, despite their excellent calibration performance when evaluated on all items. In this work, we address the miscalibration in the top-N recommended items. We first define evaluation metrics for this objective and then propose a generic method to optimize calibration models focusing on the top-N items. It groups the top-N items by their ranks and optimizes distinct calibration models for each group with rank-dependent training weights. We verify the effectiveness of the proposed method for both explicit and implicit feedback datasets, using diverse classes of recommender models.

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Sato, M. (2024). Calibrating the Predictions for Top-N Recommendations. In RecSys 2024 - Proceedings of the 18th ACM Conference on Recommender Systems (pp. 963–968). Association for Computing Machinery, Inc. https://doi.org/10.1145/3640457.3688177

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