Fr. 418.80

Nonlinear Statistical Models

English · Hardback

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Description

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Informationen zum Autor A. Ronald Gallant, Professor of Economics and Liberal Arts Research Professor, The Pennsylvania State University, US. Klappentext A comprehensive text and reference bringing together advances in the theory of probability and statistics and relating them to applications. The three major categories of statistical models that relate dependent variables to explanatory variables are covered: univariate regression models, multivariate regression models, and simultaneous equations models. Methods are illustrated with worked examples, complete with figures that display code and output. Zusammenfassung A comprehensive text and reference bringing together advances in the theory of probability and statistics and relating them to applications. Inhaltsverzeichnis Univariate Nonlinear Regression. Univariate Nonlinear Regression: Special Situations. A Unified Asymptotic Theory for Nonlinear Models with RegressionStructure. Univariate Nonlinear Regression: Asymptotic Theory. Multivariate Nonlinear Regression. Nonlinear Simultaneous Equations Models. A Unified Asymptotic Theory for Dynamic Nonlinear Models. References. Index.

Product details

Authors A Ronald Gallant, A. Ronald Gallant, A. Ronald (North Carolina State Universit Gallant, Ar Gallant, GALLANT A RONALD
Publisher Wiley, John and Sons Ltd
 
Languages English
Product format Hardback
Released 25.02.1987
 
EAN 9780471802600
ISBN 978-0-471-80260-0
No. of pages 632
Series Wiley Series in Probability &
Subject Natural sciences, medicine, IT, technology > Mathematics > Probability theory, stochastic theory, mathematical statistics

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