Cover image for Multilevel analysis : techniques and applications
Title:
Multilevel analysis : techniques and applications
Personal Author:
Series:
Quantitative methodology series
Edition:
2nd ed.
Publication Information:
New York, NY. : Routledge, 2010
Physical Description:
x, 382p. : ill. ; 24 cm.
ISBN:
9781848728455

9781848728462

9780203852279

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30000010256976 HA29 H783 2010 Open Access Book Book
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Summary

Summary

This practical introduction helps readers apply multilevel techniques to their research. Noted as an accessible introduction, the book also includes advanced extensions, making it useful as both an introduction and as a reference to students, researchers, and methodologists. Basic models and examples are discussed in non-technical terms with an emphasis on understanding the methodological and statistical issues involved in using these models. The estimation and interpretation of multilevel models is demonstrated using realistic examples from various disciplines. For example, readers will find data sets on stress in hospitals, GPA scores, survey responses, street safety, epilepsy, divorce, and sociometric scores, to name a few. The data sets are available on the website in SPSS, HLM, MLwiN, LISREL and/or Mplus files. Readers are introduced to both the multilevel regression model and multilevel structural models.

Highlights of the second edition include:

Two new chapters--one on multilevel models for ordinal and count data (Ch. 7) and another on multilevel survival analysis (Ch. 8). Thoroughly updated chapters on multilevel structural equation modeling that reflect the enormous technical progress of the last few years. The addition of some simpler examples to help the novice, whilst the more complex examples that combine more than one problem have been retained. A new section on multivariate meta-analysis (Ch. 11). Expanded discussions of covariance structures across time and analyzing longitudinal data where no trend is expected. Expanded chapter on the logistic model for dichotomous data and proportions with new estimation methods. An updated website at http://www.joophox.net/ with data sets for all the text examples and up-to-date screen shots and PowerPoint slides for instructors.

Ideal for introductory courses on multilevel modeling and/or ones that introduce this topic in some detail taught in a variety of disciplines including: psychology, education, sociology, the health sciences, and business. The advanced extensions also make this a favorite resource for researchers and methodologists in these disciplines. A basic understanding of ANOVA and multiple regression is assumed. The section on multilevel structural equation models assumes a basic understanding of SEM.


Author Notes

Joop J. Hoxis Professor and Chair of Social Science Methodology at Utrecht University in the Netherlands. A Fellow of the Royal Statistical Society and a founding member of the European Association of Methodology, his recent publications focus on survey non-response, interviewer effects, survey data quality, missing data, and multilevel analysis of regression and structural equation models. He is recognized as an expert in multilevel analysis and as a consultant he has been involved with applying multilevel models in a diversity of fields. He has a reputation for being able to explain technically complicated matters in an accessible manner.


Table of Contents

1 Introduction to Multilevel Analysis
2 The Basic Two-Level Regression Model
3 Estimation and Hypothesis Testing in Multilevel Regression
4 Some Important Methodological and Statistical Issues
5 Analyzing Longitudinal Data
6 The Multilevel Generalized Linear Model for Dichotomous Data and Proportions
7 The Multilevel Generalized Linear Model for Categorical and Count Data
8 Multilevel Survival Analysis
9 Cross-classified Multilevel Models
10 Multivariate Multilevel Regression Models
11 The Multilevel Approach to Meta-Analysis
12 Sample Sizes and Power Analysis in Multilevel Regression
13 Advanced Issues in Estimation and Testing
14 Multilevel Factor Models
15 Multilevel Path Models
16 Latent Curve Models