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

Sib. Èlektron. Mat. Izv., 2022 Volume 19, Issue 1, Pages 292–308 (Mi semr1500)

Probability theory and mathematical statistics

On detecting alternatives by one-parametric recursive residuals

A. I. Sakhanenkoab

a Novosibirsk State University, 2, Pirogova str., Novosibirsk, 630090, Russia
b Sobolev Institute of Mathematics, 4, Acad. Koptyug ave., 630090, Novosibirsk, Russia

Abstract: We consider a linear regression model with one unknown parameter which is estimated by the least squares method. We suppose that, in reality, the given observations satisfy a close alternative to the linear regression model. We investigate the limiting behaviour of the normalized process of sums of recursive residuals. Such residuals were introduced by Brown, Durbin and Evans (1975) and their sums are a convenient tool for detecting discrepancy between observations and the studied model. In particular, under less restrictive assumptions we generalize a key result from Bischoff (2016).

Keywords: linear regression, recursive residuals, weak convergence, Wiener process, close alternative.

UDC: 519.233

MSC: 62F03

Received October 4, 2021, published May 30, 2022

Language: English

DOI: 10.33048/semi.2022.19.024



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