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Sublinear algorithms for testing monotone and unimodal distributions

机译:用于测试单调和单峰分布的亚线性算法

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摘要

The complexity of testing properties of monotone and unimodal distributions, when given access only to samples of the distribution, is investigated. Two kinds of sublinear-time algorithms---those for testing monotonicity and those that take advantage of monotonicity---are provided. The first algorithm tests if a given distribution on [n] is monotone or far away from any monotone distribution in L1-norm; this algorithm uses O(√n) samples and is shown to be nearly optimal. The next algorithm, given a joint distribution on [n] x [n], tests if it is monotone or is far away from any monotone distribution in L1-norm; this algorithm uses O(n3/2) samples. The problems of testing if two monotone distributions are close in L1-norm and if two random variables with a monotone joint distribution are close to being independent in L1-norm are also considered. Algorithms for these problems that use only poly(log n) samples are presented. The closeness and independence testing algorithms for monotone distributions are significantly more efficient than the corresponding algorithms as well as the lower bounds for arbitrary distributions. Some of the above results are also extended to unimodal distributions.
机译:当仅访问分布的样本时,研究了单调和单峰分布的测试属性的复杂性。提供了两种亚线性时间算法-用于测试单调性的算法和利用单调性的算法-。第一种算法测试[n]上的给定分布是单调分布还是远离L 1 -范数中的任何单调分布;该算法使用O(√n)个样本,并且被证明是最佳的。给定[n] x [n]上的联合分布的下一个算法,测试它是单调的还是远离L 1 -范数中的任何单调的分布;该算法使用O(n 3/2 )个样本。测试在L 1 -范数中两个单调分布是否接近以及在L 1 -范数中两个具有单调联合分布的随机变量是否接近独立的问题是也考虑过。提出了仅使用poly(log n)样本的这些问题的算法。单调分布的紧密度和独立性测试算法比相应的算法效率更高,而且任意分布的下界也明显更高。上述某些结果也扩展到单峰分布。

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