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Testing Similar Means

机译:测试相似的手段

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We consider the problem of testing a basic property of collections of distributions: having similar means. Namely, the algorithm should accept collections of distributions in which all distributions have means that do not differ by more than some given parameter, and should reject collections that are relatively far from having this property. By `far' we mean that it is necessary to modify the distributions in a relatively significant manner (measured according to the 1 distance averaged over the distributions) so as to obtain the property. We study this problem in two models. In the first model (the query model) the algorithm may ask for samples from any distribution of its choice, and in the second model (the sampling model) the distributions from which it gets samples are selected randomly. We provide upper and lower bounds in both models. In particular, in the query model, the complexity of the problem is polynomial in 1 (where is the given distance parameter). While in the sampling model, the complexity grows roughly as m1?poly(), where m is the number of distributions.
机译:我们考虑测试分布集合的基本属性的问题:具有相似的方法。即,该算法应接受所有分布的均值相差不超过某个给定参数的分布的集合,并应拒绝距离具有此属性相对较远的集合。 “远”是指有必要以相对显着的方式修改分布(根据分布上的平均1距离进行测量)以获得属性。我们用两个模型研究这个问题。在第一个模型(查询模型)中,算法可以从其选择的任何分布中请求样本,而在第二个模型(采样模型)中,从中获取样本的分布是随机选择的。我们在两个模型中都提供了上限和下限。特别是在查询模型中,问题的复杂度为1的多项式(其中给定的距离参数)。在采样模型中,复杂度随着m1?poly()的增长而大致增长,其中m是分布数。

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