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Nonparametric series density estimation and testing

机译:非参数级数密度估计和测试

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This paper first establishes consistency of the exponential series density estimator when nuisance parameters are estimated as a preliminary step. Convergence in relative entropy of the density estimator is preserved, which in turn implies that the quantiles of the population density can be consistently estimated. The density estimator can then be employed to provide a test for the specification of fitted density functions. Commonly, this testing problem has utilized statistics based upon the empirical distribution function, such as the Kolmogorov-Smirnov or Cramer von-Mises, type. However, the tests of this paper are shown to be asymptotically pivotal having limiting standard normal distribution, unlike those based on the edf. For comparative purposes with those tests, the numerical properties of both the density estimator and test are explored in a series of experiments. Some general superiority over commonly used edf based tests is evident, whether standard or bootstrap critical values are used.
机译:本文首先在估计扰动参数时建立指数级密度估计器的一致性。保留了密度估计量的相对熵的收敛性,这又意味着可以一致地估计总体密度的分位数。然后可以使用密度估计器为拟合的密度函数的规格提供测试。通常,此测试问题已使用基于经验分布函数的统计信息,例如Kolmogorov-Smirnov或Cramer von-Mises类型。但是,与基于edf的测试不同,本文的测试显示出渐近关键的正态分布。为了与这些测试进行比较,在一系列实验中探索了密度估计器和测试的数值特性。无论使用标准还是自举临界值,都比一般的基于edf的测试具有一些普遍优势。

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