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Local moment matching: A unified methodology for symmetric functional estimation and distribution estimation under Wasserstein distance

机译:局部矩匹配:Wasserstein距离下对称函数估计和分布估计的统一方法

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We present emph{Local Moment Matching (LMM)}, a unified methodology for symmetric functional estimation and distribution estimation under Wasserstein distance. We construct an efficiently computable estimator that achieves the minimax rates in estimating the distribution up to permutation, and show that the plug-in approach of our unlabeled distribution estimator is “universal" in estimating symmetric functionals of discrete distributions. Instead of doing best polynomial approximation explicitly as in existing literature of functional estimation, the plug-in approach conducts polynomial approximation implicitly and attains the optimal sample complexity for the entropy, power sum and support size functionals.
机译:我们提出 emph {Local Moment Matching(LMM)},这是在Wasserstein距离下进行对称功能估计和分布估计的统一方法。我们构造了一个有效的可计算估计器,该估计器在估计直到置换为止的分布时达到了最小最大速率,并表明我们的未标记分布估计器的插入方法在估计离散分布的对称函数时是“通用的”,而不是进行最佳多项式逼近显式地如在现有的函数估计文献中一样,插件方法隐式地进行多项式逼近,并为熵,幂和和支持大小函数获得最佳的样本复杂度。

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