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Regularity and uniqueness for constrained M-estimates and redescending M-estimates

机译:约束M估计和递减M估计的规则性和唯一性

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摘要

Constrained M-estimates of multivariate location and scatter are found by finding the global minimum of an objective function subject to a constraint. They are related to redescending M-estimates of multivariate location and scatter since any stationary point of the objective function corresponds to such an M-estimate. Unfortunately, even for the population form of the estimator, that is, the constrained M-functional, the objective function may have multiple stationary points. In this paper, we give conditions under which the objective function is as well behaved as possible, in particular that it has at most one local minimum. To carry out this task, we introduce a class of distributions which we call "regular" distributions with respect to a particular objective function.
机译:通过找到受约束的目标函数的全局最小值,可以找到多元位置和散点的约束M估计。由于目标函数的任何固定点都对应于这样的M估计,因此它们与降低多元位置和散点的M估计有关。不幸的是,即使对于估计量的总体形式,即受约束的M函数,目标函数也可能具有多个固定点。在本文中,我们给出了条件,在该条件下目标函数应尽可能地表现良好,特别是它具有至多一个局部最小值。为了执行此任务,我们引入了一类分布,相对于特定的目标函数,我们称其为“规则”分布。

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