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JOURNALS // Sibirskie Èlektronnye Matematicheskie Izvestiya [Siberian Electronic Mathematical Reports] // Archive

Sib. Èlektron. Mat. Izv., 2014 Volume 11, Pages 464–475 (Mi semr502)

This article is cited in 4 papers

Probability theory and mathematical statistics

On conditions for asymptotic normality of Fisher's one-step estimators in one-parameter families of distributions

Yu. Yu. Linkeab, A. I. Sakhanenkoab

a Sobolev Institute of Mathematics, Siberian Branch of the Russian Academy of Sciences, Novosibirsk
b Novosibirsk State University

Abstract: We consider asymptotic behavior of one-step statistical estimators introduced by R. Fisher as approximations for consistent maximum likelihood estimators. Some sufficient conditions are found for these one-step estimators to be asymptotically normal even in the cases when either the maximum likelihood estimators may not exist or exist but be inconsistent. Investigated are connections between the smoothness conditions for the density of the sample distribution and the rate of proximity of the preliminary estimator and the parameter which are needed for fulfillment of the properties under considerations.

Keywords: one-step estimators, asymptotical normality, maximum likelihood estimator, Newton's method, preliminary estimator, proximity of estimation.

UDC: 519.233.22

MSC: 62F12

Received March 14, 2014, published June 16, 2014



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