A Review of the Linear Sufficiency and Linear Prediction Sufficiency in the Linear Model with New Observations

Date

2021-10-02

Authors

Haslett, Stephen
Isotalo, Jarkko
Kala, Radosław
Markiewicz, A.
Puntanen, S.

Journal Title

Journal ISSN

Volume Title

Publisher

Springer, Cham

Abstract

We consider the general linear model y = Xβββ + εεε, denoted as M = {y, Xβββ, V}, supplemented with the new unobservable random vector y∗, coming from y∗ = X∗βββ + εεε∗, where the covariance matrix of y∗ is known as well as the cross-covariance matrix between y∗ and y. A linear statistic Fy is called linearly sufficient for X∗βββ if there exists a matrix A such that AFy is the best linear unbi-ased estimator, BLUE, for X∗βββ. The concept of linear sufficiency with respect to a predictable random vector is defined in the corresponding way but considering the best linear unbiased predictor, BLUP instead of BLUE. In this paper, we consider the linear sufficiency of Fy with respect to y∗, X∗βββ, and εεε∗. We also apply our results into the linear mixed model. The concept of linear sufficiency was essentially introduced in early 1980s by Baksalary, Kala, and Drygas. Recently, several papers providing further properties of the linear sufficiency have been published by the present authors. Our aim is to provide an easy-to-read review of recent results and while doing that, we go through some basic concepts related to linear sufficiency. As a review paper, we do not provide many proofs, instead our goal is to explain and clarify the central results.

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Citation

Haslett, S.J., Isotalo, J., Kala, R., Markiewicz, A., Puntanen, S. (2021). A Review of the Linear Sufficiency and Linear Prediction Sufficiency in the Linear Model with New Observations. In: Filipiak, K., Markiewicz, A., von Rosen, D. (eds) Multivariate, Multilinear and Mixed Linear Models. Contributions to Statistics. Springer, Cham. https://doi.org/10.1007/978-3-030-75494-5_11

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Book chapter

Book Title

Multivariate, Multilinear and Mixed Linear Models

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Restricted until

2099-12-31

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