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Asymptotic normality of generalized maximum spacing estimators for multivariate observations

机译:多变量观测的广义最大间距估计的渐近常态

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摘要

In this paper, the maximum spacing method is considered for multivariate observations. Nearest neighbor balls are used as a multidimensional analogue to univariate spacings. A class of information-type measures is used to generalize the concept of maximum spacing estimators of model parameters. Asymptotic normality of these generalized maximum spacing estimators is proved when the assigned model class is correct, that is, the true density is a member of the model class.
机译:在本文中,考虑了最大间距方法进行多变量观察。最近的邻球用作多维模拟,与单变量间距。一类信息型措施用于概括模型参数的最大间距估算的概念。当分配的模型类是正确的时,证明了这些广义最大间距估计器的渐近常态,即真正的密度是模型类的成员。

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