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Regression Analysis Under A Priori Parameter Restrictions 1st Edition Pavel S Knopov

  • SKU: BELL-2439816
Regression Analysis Under A Priori Parameter Restrictions 1st Edition Pavel S Knopov
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Regression Analysis Under A Priori Parameter Restrictions 1st Edition Pavel S Knopov instant download after payment.

Publisher: Springer-Verlag New York
File Extension: PDF
File size: 2.48 MB
Pages: 234
Author: Pavel S. Knopov, Arnold S. Korkhin (auth.)
ISBN: 9781461405733, 1461405734
Language: English
Year: 2012
Edition: 1

Product desciption

Regression Analysis Under A Priori Parameter Restrictions 1st Edition Pavel S Knopov by Pavel S. Knopov, Arnold S. Korkhin (auth.) 9781461405733, 1461405734 instant download after payment.

This monograph focuses on the construction of regression models with linear and non-linear constrain inequalities from the theoretical point of view. Unlike previous publications, this volume analyses the properties of regression with inequality constrains, investigating the flexibility of inequality constrains and their ability to adapt in the presence of additional a priori information The implementation of inequality constrains improves the accuracy of models, and decreases the likelihood of errors. Based on the obtained theoretical results, a computational technique for estimation and prognostication problems is suggested. This approach lends itself to numerous applications in various practical problems, several of which are discussed in detail The book is useful resource for graduate students, PhD students, as well as for researchers who specialize in applied statistics and optimization. This book may also be useful to specialists in other branches of applied mathematics, technology, econometrics and finance

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