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Huber's Minimax Approach in Distribution Classes with Bounded Variances and Subranges with Applications to Robust Detection of Signals
作者姓名:GeorgyShevlyakov  KiseonKim
作者单位:DepartmentofInformationandCommunications,GwansgjuInstituteofScienceandTechnology(GIST),Oryongdong,Buk-gu,Gwangju,500-712,RepublicofKorea
摘    要:A brief survey of former and recent results on Huber‘s minimax approach in robust statistics is given. The least informative distributions minimizing Fisher information for location over several distribution classes with upper-bounded variances and subranges are written down. These least informative distributions are qualitatively different from classical Huber‘s solution and have the following common structure: (i) with relatively small variances they are short-tailed, in particular normal;(ii) with relatively large variances they are heavytailed, in particular the Laplace; (iii) they are compromise with relatively moderate variances. These results allow to raise the efficiency of minimax robust procedures retaining high stability as compared to classical Huber‘s procedure for contaminated normal populations. In application to signal detection problems, the proposed minimax detection rule has proved to be robust and close to Huber‘s for heavy-tailed distributions and more efficient than Huber‘s for short-tailed ones both in asymptotics and on finite samples。

关 键 词:稳健统计  最小信息分布  胡布尔最大逼近  有界变量
收稿时间:15 March 2004

Huber’s Minimax Approach in Distribution Classes with Bounded Variances and Subranges with Applications to Robust Detection of Signals
GeorgyShevlyakov KiseonKim.Huber’s Minimax Approach in Distribution Classes with Bounded Variances and Subranges with Applications to Robust Detection of Signals[J].Acta Mathematicae Applicatae Sinica,2005,21(2):269-284.
Authors:Georgy Shevlyakov  Kiseon Kim
Abstract:A brief survey of former and recent results on Huber's minimax approach in robust statistics is given. The least mformative distributions minimizing Fisher information for location over several distribution classes with upper-bounded variances and subranges are written down. These least informative distributions are qualitatively different from classical Huber's solution and have the following common structure: (i) with relatively small variances they are short-tailed, in particular normal; (ii) with relatively large variances they are heavytailed, in particular the Laplace; (iii) they are compromise with relatively moderate variances. These results allow to raise the efficiency of minimax robust procedures retaining high stability as compared to classical Huber's procedure for contaminated normal populations. In application to signal detection problems, the proposed minimax detection rule has proved to be robust and close to Huber's for heavy-tailed distributions and more efficient than Huber's for short-tailed ones both in asymptotics and on finite samples.
Keywords:Robustness  least informative distributions
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