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Ranking and Rating Rankings and Ratings

机译:排名和评级排名和评级

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摘要

Cardinal scores collected from people are well known to suffer from miscalibrations. A popular approach to address this issue is to assume simplistic models of miscalibration (such as linear biases) to de-bias the scores. This approach, however, often fares poorly because people's miscalibrations are typically far more complex and not well understood. It is widely believed that in the absence of simplifying assumptions on the miscalibration, the only useful information in practice from the cardinal scores is the induced ranking. In this paper we address the fundamental question of whether this widespread folklore belief is actually true. We consider cardinal scores with arbitrary (or even adversarially chosen) miscalibrations that is only required to be consistent with the induced ranking. We design rating-based estimators and prove that despite making no assumptions on the ratings, they strictly and uniformly outperform all possible estimators that rely on only the ranking. These estimators can be used as a plug-in to show the superiority of cardinal scores over ordinal rankings for a variety of applications, including A/B testing and ranking. This work thus provides novel fundamental insights in the eternal debate between cardinal and ordinal data: It ranks the approach of using ratings higher than that of using rankings, and rates both approaches in terms of their estimation errors.
机译:从人们收集的红衣主教评分是众所周知的患有错误矛盾。解决此问题的流行方法是假设错误频串(如线性偏差)的简单模型,以使得分偏差。然而,这种方法往往频率不佳,因为人们的错误矛盾通常更复杂并且不太了解。众所周知,在没有简化错误的假设的情况下,在基本评分中实践中唯一有用的信息是诱导的排名。在本文中,我们解决了这种普遍的民间传说信念是否实际上是真实的基本问题。我们考虑具有任意(甚至是普遍选择的)错误凝视的红衣主教评分,只需要与诱导的排名保持一致。我们设计基于评级的估算器,并证明尽管没有对评级没有假设,但它们严格和统一地优于所有可能的估计,依赖于排名。这些估算器可以用作插件,以显示多个应用程序的红衣主教评分的优越性,包括A / B测试和排名。因此,这项工作在Cardinal和序数数据之间的永恒辩论中提供了新的基本洞察:它排名使用高于使用排名的评级的方法,以及两种方法在其估计错误方面的率。

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