Description
Statistical Modelling for Social Researchers
Principles and Practice
Social Research Today Series
Author: Tarling Roger
Language: EnglishKeywords
SPSS Output; Dummy Variable; explanatory; Multinomial Logistic Regression; variable; SPSS Dialogue Box; response; Explanatory Variables; logistic; Regression Model; regression; Loglinear Models; multinomial; Pearson Residual; dummy; Reference Category; dialogue; Hourly Pay; box; Community Penalties; general; Response Variable Form; Ordinal Logistic Regression; Standardised Residuals; Latent Variables; Simple Random Sample; UK Data Archive; Unobserved Variables; Multilevel Models; Vice Versa; Police Force Area; Log Odds; Categorical Variables; Response Variable; Missing Data
Publication date: 09-2008
· 17.4x24.6 cm · Paperback
Publication date: 09-2008
· 17.4x24.6 cm · Hardback
Description
/li>Contents
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/li>Biography
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This book explains the principles and theory of statistical modelling in an intelligible way for the non-mathematical social scientist looking to apply statistical modelling techniques in research. The book also serves as an introduction for those wishing to develop more detailed knowledge and skills in statistical modelling. Rather than present a limited number of statistical models in great depth, the aim is to provide a comprehensive overview of the statistical models currently adopted in social research, in order that the researcher can make appropriate choices and select the most suitable model for the research question to be addressed. To facilitate application, the book also offers practical guidance and instruction in fitting models using SPSS and Stata, the most popular statistical computer software which is available to most social researchers. Instruction in using MLwiN is also given.
Models covered in the book include; multiple regression, binary, multinomial and ordered logistic regression, log-linear models, multilevel models, latent variable models (factor analysis), path analysis and simultaneous equation models and models for longitudinal data and event histories. An accompanying website hosts the datasets and further exercises in order that the reader may practice developing statistical models.
An ideal tool for postgraduate social science students, research students and practicing social researchers in universities, market research, government social research and the voluntary sector.
1. Statistical Modelling: An Overview 2. Research Designs and Data 3. Statistical Preliminaries 4. Multiple Regression for Continuous Response Variables 5. Logistic Regression for Binary Response Variables 6. Multinomial Logistic Regression for Multinomial Response Variables 7. Loglinear Modelling 8. Ordinal Logistic Regression for Ordered Categorical Response Variables 9. Multilevel Modelling 10. Latent Variables and Factor Analysis 11. Causal Modelling: Simultaneous Equation and Structural Equation Models 12. Longitudinal Data Analysis 13. Event History Models
Roger Tarling is Professor of Social Research at the University of Surrey, a post he has occupied since 1996. Before that he was for 23 years a member of the Home Office Research and Planning Unit, the last six as Head of RPU. Throughout his career he has used statistical modelling in research and has had to explain statistical models and the inferences from them to research assistants, policy makers and to the students he has taught. He is a Certified Statistician of the Royal Statistical Society.