Maximum Likelihood Estimation with Stata, Fourth Edition

Maximum Likelihood Estimation with Stata, Fourth Edition
Title Maximum Likelihood Estimation with Stata, Fourth Edition PDF eBook
Author William Gould
Publisher Stata Press
Pages 352
Release 2010-10-27
Genre Mathematics
ISBN 9781597180788

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Maximum Likelihood Estimation with Stata, Fourth Edition is written for researchers in all disciplines who need to compute maximum likelihood estimators that are not available as prepackaged routines. Readers are presumed to be familiar with Stata, but no special programming skills are assumed except in the last few chapters, which detail how to add a new estimation command to Stata. The book begins with an introduction to the theory of maximum likelihood estimation with particular attention on the practical implications for applied work. Individual chapters then describe in detail each of the four types of likelihood evaluator programs and provide numerous examples, such as logit and probit regression, Weibull regression, random-effects linear regression, and the Cox proportional hazards model. Later chapters and appendixes provide additional details about the ml command, provide checklists to follow when writing evaluators, and show how to write your own estimation commands.

Maximum Likelihood Estimation with Stata

Maximum Likelihood Estimation with Stata
Title Maximum Likelihood Estimation with Stata PDF eBook
Author William Gould
Publisher
Pages 324
Release 2003
Genre Mathematics
ISBN

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Maximum Likelihood Estimation with Stata, Third Edition

Maximum Likelihood Estimation with Stata, Third Edition
Title Maximum Likelihood Estimation with Stata, Third Edition PDF eBook
Author William Gould
Publisher Stata Press
Pages 312
Release 2006
Genre Computers
ISBN 1597180122

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Written by the creators of Stata's likelihood maximization features, Maximum Likelihood Estimation with Stata, Third Edition continues the pioneering work of the previous editions. Emphasizing practical implications for applied work, the first chapter provides an overview of maximum likelihood estimation theory and numerical optimization methods. With step-by-step instructions, the next several chapters detail the use of Stata to maximize user-written likelihood functions. Various examples include logit, probit, linear, Weibull, and random-effects linear regression as well as the Cox proportional hazards model. The final chapters describe how to add a new estimation command to Stata. Assuming a familiarity with Stata, this reference is ideal for researchers who need to maximize their own likelihood functions. New ml commands and their functions: constraint: fits a model with linear constraints on the coefficient by defining your constraints; accepts a constraint matrix ml model: picks up survey characteristics; accepts the subpop option for analyzing survey data optimization algorithms: Berndt-Hall-Hall-Hausman (BHHH), Davidon-Fletcher-Powell (DFP), Broyden-Fletcher-Goldfarb-Shanno (BFGS) ml: switches between optimization algorithms; computes variance estimates using the outer product of gradients (OPG)

An Introduction to Survival Analysis Using Stata, Second Edition

An Introduction to Survival Analysis Using Stata, Second Edition
Title An Introduction to Survival Analysis Using Stata, Second Edition PDF eBook
Author Mario Cleves
Publisher Stata Press
Pages 398
Release 2008-05-15
Genre Computers
ISBN 1597180416

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"[This book] provides new researchers with the foundation for understanding the various approaches for analyzing time-to-event data. This book serves not only as a tutorial for those wishing to learn survival analysis but as a ... reference for experienced researchers ..."--Book jacket.

Data Analysis Using Stata

Data Analysis Using Stata
Title Data Analysis Using Stata PDF eBook
Author Ulrich Kohler (Dr. phil.)
Publisher Stata Press
Pages 399
Release 2005-06-15
Genre Computers
ISBN 1597180076

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"This book provides a comprehensive introduction to Stata with an emphasis on data management, linear regression, logistic modeling, and using programs to automate repetitive tasks. Using data from a longitudinal study of private households in Germany, the book presents many examples from the social sciences to bring beginners up to speed on the use of Stata." -- BACK COVER.

Regression Models for Categorical and Limited Dependent Variables

Regression Models for Categorical and Limited Dependent Variables
Title Regression Models for Categorical and Limited Dependent Variables PDF eBook
Author J. Scott Long
Publisher SAGE
Pages 334
Release 1997-01-09
Genre Mathematics
ISBN 9780803973749

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Evaluates the most useful models for categorical and limited dependent variables (CLDVs), emphasizing the links among models and applying common methods of derivation, interpretation, and testing. The author also explains how models relate to linear regression models whenever possible. Annotation c.

Handbook of Statistical Analyses Using Stata

Handbook of Statistical Analyses Using Stata
Title Handbook of Statistical Analyses Using Stata PDF eBook
Author Brian S. Everitt
Publisher CRC Press
Pages 354
Release 2006-11-15
Genre Mathematics
ISBN 1466580577

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With each new release of Stata, a comprehensive resource is needed to highlight the improvements as well as discuss the fundamentals of the software. Fulfilling this need, AHandbook of Statistical Analyses Using Stata, Fourth Edition has been fully updated to provide an introduction to Stata version 9. This edition covers many