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首页> 外文期刊>The Annals of Statistics: An Official Journal of the Institute of Mathematical Statistics >ACTIVE RANKING FROM PAIRWISE COMPARISONS AND WHEN PARAMETRIC ASSUMPTIONS DO NOT HELP
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ACTIVE RANKING FROM PAIRWISE COMPARISONS AND WHEN PARAMETRIC ASSUMPTIONS DO NOT HELP

机译:从成对比较和参数假设没有帮助时激活排名

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摘要

We consider sequential or active ranking of a set of n items based on noisy pairwise comparisons. Items are ranked according to the probability that a given item beats a randomly chosen item, and ranking refers to partitioning the items into sets of prespecified sizes according to their scores. This notion of ranking includes as special cases the identification of the top-k items and the total ordering of the items. We first analyze a sequential ranking algorithm that counts the number of comparisons won, and uses these counts to decide whether to stop, or to compare another pair of items, chosen based on confidence intervals specified by the data collected up to that point. We prove that this algorithm succeeds in recovering the ranking using a number of comparisons that is optimal up to logarithmic factors. This guarantee does depend on whether or not the underlying pairwise probability matrix, satisfies a particular structural property, unlike a significant body of past work on pairwise ranking based on parametric models such as the Thurstone or Bradley-Terry-Luce models. It has been a long-standing open question as to whether or not imposing these parametric assumptions allows for improved ranking algorithms. For stochastic comparison models, in which the pairwise probabilities are bounded away from zero, our second contribution is to resolve this issue by proving a lower bound for parametric models. This shows, perhaps surprisingly, that these popular parametric modeling choices offer at most logarithmic gains for stochastic comparisons.
机译:我们考虑基于嘈杂的成对比较的一组N项的顺序或主动排名。根据给定项目击败随机选择的项目的概率,排名是指排名的排名,并指的是根据其分数将项目分区成预定大小。该排名概念包括特殊情况,该案例识别Top-K项目和项目的总排序。我们首先分析一个顺序排名算法,这些算法计算比较的比较数量,并使用这些计数来决定是否停止,或者比较基于由该点所指定的数据指定的置信区间选择的另一对项目。我们证明,该算法成功使用许多最佳到对数因子的比较恢复排名。该保证确实取决于底层的成对概率矩阵满足特定的结构特性,与基于参数型模型的比例排序,与诸如Thurstone或Bradley-Terry-Luce模型的比例排名不同。对于是否施加这些参数假设,这是一个长期的开放问题,允许改进的排名算法。对于随机比较模型,其中重对概率偏离零,我们的第二次贡献是通过证明参数模型的下限来解决这个问题。这表明,也许令人惊讶的是,这些流行的参数化建模选择在随机比较的大多数对数增益提供。

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