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May, 1979 High-Order Efficiency in the Estimation of Linear Processes
Yuzo Hosoya
Ann. Statist. 7(3): 516-530 (May, 1979). DOI: 10.1214/aos/1176344673

Abstract

Estimation as a reduction of data is usually accompanied by some loss of information. This paper theoretically compares asymptotically efficient estimation methods for parameters in Gaussian linear processes. By means of the concept of "asymptotic information loss" suitably defined, estimates equivalent to the order of $N^{-\frac{1}{2}}$ are differentiated. This problem was studied by C. R. Rao for multinomial distributions and by K. Takeuchi for the exponential family of distributions. They showed that for the i.i.d. case the maximum likelihood estimate is superior to other efficient estimates. This paper extends their results to the Whittle-Walker model of Gaussian linear processes, demonstrating the optimality of the maximum likelihood estimate for that model. In addition, the paper contains a lemma of independent interest. The Craig-Aitken theorem is concerned with the independence of two quadratic forms of a finite-dimensional Gaussian random vector; the theorem is extended to infinite-dimensional Gaussian random vectors.

Citation

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Yuzo Hosoya. "High-Order Efficiency in the Estimation of Linear Processes." Ann. Statist. 7 (3) 516 - 530, May, 1979. https://doi.org/10.1214/aos/1176344673

Information

Published: May, 1979
First available in Project Euclid: 12 April 2007

zbMATH: 0406.62067
MathSciNet: MR527487
Digital Object Identifier: 10.1214/aos/1176344673

Subjects:
Primary: 62M10
Secondary: 62F20

Keywords: asymptotic information loss , Asymptotic theory , high-order efficiency , information amount , linear processes , the maximum-likelihood estimate , Whittle-Walker model

Rights: Copyright © 1979 Institute of Mathematical Statistics

Vol.7 • No. 3 • May, 1979
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