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Stretching the Effectiveness of MLE from Accuracy to Bias for Pairwise Comparisons

机译:从准确性伸展MLE的有效性,以便对比较进行偏见

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A number of applications (e.g., AI bot tournaments, sports, peer grading, crowdsourcing) use pairwise comparison data and the Bradley-Terry-Luce (BTL) model to evaluate a given collection of items (e.g., bots, teams, students, search results). Past work has shown that under the BTL model, the widely-used maximum-likelihood estimator (MLE) is minimax-optimal in estimating the item parameters, in terms of the mean squared error. However, another important desideratum for designing estimators is fairness. In this work, we consider one specific type of fairness, which is the notion of bias in statistics. We show that the MLE incurs a suboptimal rate in terms of bias. We then propose a simple modification to the MLE, which "stretches" the bounding box of the maximum-likelihood optimizer by a small constant factor from the underlying ground truth domain. We show that this simple modification leads to an improved rate in bias, while maintaining minimax-optimality in the mean squared error. In this manner, our proposed class of estimators provably improves fairness in the sense of bias without loss in accuracy.
机译:许多应用程序(例如,AI Bot锦标赛,体育,对等分级,众包)使用成对比较数据和Bradley-Terry-Luce(BTL)模型来评估给定的物品收集(例如,机器人,团队,学生,搜索结果)。过去的工作表明,在BTL模型下,在均方的误差方面,广泛使用的最大似然估计器(MLE)在估计项目参数时是最佳的。然而,用于设计估算器的另一个重要冒险是公平的。在这项工作中,我们考虑一种特定类型的公平,这是统计数据偏见的概念。我们表明,MLE在偏见方面招收了次优率。然后,我们向MLE提出简单的修改,它将通过来自底层地面真实域的小恒定因子“延伸”最大似然优化器的边界框。我们表明,这种简单的修改导致偏差的提高率,同时在平均平衡误差中保持最小的最优性。以这种方式,我们所提出的估计人员在没有准确性损失的情况下可怕地改善了偏见感的公平。

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