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© 2026 Ann Mathenge · Built with love, coffee, and cat hair.
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© 2026 Ann Mathenge · Built with love, coffee, and cat hair.
By Yadolah Dodge, Jana Jureckova
"Since 1757, when Roger Joseph Boscovich addressed the fundamental mathematical problem in determining the parameters which best fits observational equations, a large number of estimation methods has been proposed and developed for linear regression. Four of the commonly used methods are the least absolute deviations, least squares, trimmed least squares, and the M-regression. Each of these methods has its own competitive edge but none is good for all purposes.
This book focuses on construction of an adaptive combination of several pairs of these estimation methods. The purpose of adaptive methods is to help users make an objective choice and combine desirable properties of two estimators.".
"With this single objective in mind, this book describes in detail the theory, method, and algorithm for combining several pairs of estimation methods. It will be of interest for those who wish to perform regression analyses beyond the least squares method, and for researchers in robust statistics and graduate students who wish to learn some asymptotic theory for linear models.".
"The methods presented in this book are illustrated on numerical examples based on real data. The computer programs in S-PLUS for all procedures presented are available for data analysts working with applications in industry, economics, and the experimental sciences."--BOOK JACKET.
Published
April 20, 2000
Format
-
Pages
177
Language
English
ISBN
9780387989655