Talos:优化推荐系统中的Top-K准确率 / Talos: Optimizing Top-$K$ Accuracy in Recommender Systems
1️⃣ 一句话总结
这篇论文提出了一种名为Talos的新型损失函数,它通过分位数技术和阈值学习来直接优化推荐系统的Top-K准确率,从而在保证高效计算的同时,有效应对数据分布变化带来的挑战。
Recommender systems (RS) aim to retrieve a small set of items that best match individual user preferences. Naturally, RS place primary emphasis on the quality of the Top-$K$ results rather than performance across the entire item set. However, estimating Top-$K$ accuracy (e.g., Precision@$K$, Recall@$K$) requires determining the ranking positions of items, which imposes substantial computational overhead and poses significant challenges for optimization. In addition, RS often suffer from distribution shifts due to evolving user preferences or data biases, further complicating the task. To address these issues, we propose Talos, a loss function that is specifically designed to optimize the Talos recommendation accuracy. Talos leverages a quantile technique that replaces the complex ranking-dependent operations into simpler comparisons between predicted scores and learned score thresholds. We further develop a sampling-based regression algorithm for efficient and accurate threshold estimation, and introduce a constraint term to maintain optimization stability by preventing score inflation. Additionally, we incorporate a tailored surrogate function to address discontinuity and enhance robustness against distribution shifts. Comprehensive theoretical analyzes and empirical experiments are conducted to demonstrate the effectiveness, efficiency, convergence, and distributional robustness of Talos. The code is available at this https URL.
Talos:优化推荐系统中的Top-K准确率 / Talos: Optimizing Top-$K$ Accuracy in Recommender Systems
这篇论文提出了一种名为Talos的新型损失函数,它通过分位数技术和阈值学习来直接优化推荐系统的Top-K准确率,从而在保证高效计算的同时,有效应对数据分布变化带来的挑战。
源自 arXiv: 2601.19276