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Multilevel And Longitudinal Modeling Using Stata 3rd Sophia Rabehesketh

  • SKU: BELL-6806060
Multilevel And Longitudinal Modeling Using Stata 3rd Sophia Rabehesketh
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Multilevel And Longitudinal Modeling Using Stata 3rd Sophia Rabehesketh instant download after payment.

Publisher: Stata Press
File Extension: PDF
File size: 8.77 MB
Pages: 1030
Author: Sophia Rabe-Hesketh, Anders Skrondal
ISBN: 9781597181082, 1597181080
Language: English
Year: 2012
Edition: 3rd
Volume: 2 vols.

Product desciption

Multilevel And Longitudinal Modeling Using Stata 3rd Sophia Rabehesketh by Sophia Rabe-hesketh, Anders Skrondal 9781597181082, 1597181080 instant download after payment.

This book examines Stata's treatment of generalized linear mixed models, also known as multilevel or hierarchical models. These models are "mixed" because they allow fixed and random effects, and they are "generalized" because they are appropriate for continuous Gaussian responses as well as binary, count, and other types of limited dependent variables. Volume I covers continuous Gaussian linear mixed models and has nine chapters. The chapters are organized in four parts. Volume II discusses generalized linear mixed models for binary, categorical, count, and survival outcomes.

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