解决信任偏见的无偏学习排序

Aman Agarwal, Xuanhui Wang, Cheng Li, Michael Bendersky, Marc Najork
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引用次数: 74

摘要

现有的无偏学习排序模型使用反事实推理,特别是逆倾向评分(IPS),从有偏的点击数据中学习排序函数。它们处理点击不完整的偏差,但通常假设点击是无噪声的,也就是说,被点击的文档总是被假设是相关的。在本文中,我们放宽了这种不切实际的假设,并在无偏学习排序设置下明确地研究了点击噪声。具体来说,我们将噪声建模为位置依赖的信任偏差,并提出了一个基于位置的噪声感知模型TrustPBM,以更好地捕获用户点击行为。我们提出了一种期望最大化算法来估计TrustPBM中点击数据的检查和信任偏差。此外,我们表明很难使用纯IPS方法来纳入点击噪声,因此提出了一种将贝叶斯规则应用与IPS相结合的无偏学习排序的新方法。我们在三个个人搜索数据集上评估了我们提出的方法,并证明我们提出的模型可以显著优于现有的无偏学习排序方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Addressing Trust Bias for Unbiased Learning-to-Rank
Existing unbiased learning-to-rank models use counterfactual inference, notably Inverse Propensity Scoring (IPS), to learn a ranking function from biased click data. They handle the click incompleteness bias, but usually assume that the clicks are noise-free, i.e., a clicked document is always assumed to be relevant. In this paper, we relax this unrealistic assumption and study click noise explicitly in the unbiased learning-to-rank setting. Specifically, we model the noise as the position-dependent trust bias and propose a noise-aware Position-Based Model, named TrustPBM, to better capture user click behavior. We propose an Expectation-Maximization algorithm to estimate both examination and trust bias from click data in TrustPBM. Furthermore, we show that it is difficult to use a pure IPS method to incorporate click noise and thus propose a novel method that combines a Bayes rule application with IPS for unbiased learning-to-rank. We evaluate our proposed methods on three personal search data sets and demonstrate that our proposed model can significantly outperform the existing unbiased learning-to-rank methods.
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