作者
Riku Togashi, Tatsushi Oka, Naoto Ohsaka, Tetsuro Morimura
发表日期
2024/5/7
研讨会论文
The Twelfth International Conference on Learning Representations 2024
简介
Excellent tail performance is crucial for modern machine learning tasks, such as algorithmic fairness, class imbalance, and risk-sensitive decision making, as it ensures the effective handling of challenging samples within a dataset. Tail performance is also a vital determinant of success for personalized recommender systems to reduce the risk of losing users with low satisfaction. This study introduces a "safe" collaborative filtering method that prioritizes recommendation quality for less-satisfied users rather than focusing on the average performance. Our approach minimizes the conditional value at risk (CVaR), which represents the average risk over the tails of users' loss. To overcome computational challenges for web-scale recommender systems, we develop a robust yet practical algorithm that extends the most scalable method, implicit alternating least squares (iALS). Empirical evaluation on real-world datasets demonstrates the excellent tail performance of our approach while maintaining competitive computational efficiency.
引用总数
学术搜索中的文章
R Togashi, T Oka, N Ohsaka, T Morimura - arXiv preprint arXiv:2306.05292, 2023