title: Understanding the Effects of the BaiduULTR Logging Policy on TwoTower Models

publish date:

2024-09-18

authors:

Morris de Haan et.al.

paper id

2409.12043v1

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abstracts:

Despite the popularity of the two-tower model for unbiased learning to rank (ULTR) tasks, recent work suggests that it suffers from a major limitation that could lead to its collapse in industry applications: the problem of logging policy confounding. Several potential solutions have even been proposed; however, the evaluation of these methods was mostly conducted using semi-synthetic simulation experiments. This paper bridges the gap between theory and practice by investigating the confounding problem on the largest real-world dataset, Baidu-ULTR. Our main contributions are threefold: 1) we show that the conditions for the confounding problem are given on Baidu-ULTR, 2) the confounding problem bears no significant effect on the two-tower model, and 3) we point to a potential mismatch between expert annotations, the golden standard in ULTR, and user click behavior.

QA:

coming soon

编辑整理: wanghaisheng 更新日期:2024 年 9 月 23 日