Analyzing Complex Survey Data
Second Edition
- Eun Sul Lee - Oregon Health Sciences University, Portland , USA, University of Texas Health Science Center, Houston, USA
- Ronald N. Forthofer - University of Texas Health Science Center, Houston, USA
Volume:
71
Courses:
Intermediate/Advanced Research Methods | Quantitative Data Analysis | Quantitative Methods | Quantitative Research Methods in Education | Quantitative/Statistical Research in Business & Management | Research Methods in Criminal Justice | Research Methods in Political Science | Research Methods in Social Work | Research Methods in Sociology | Social Statistics | Survey Research | Survey Research Methods for Political Science
Intermediate/Advanced Research Methods | Quantitative Data Analysis | Quantitative Methods | Quantitative Research Methods in Education | Quantitative/Statistical Research in Business & Management | Research Methods in Criminal Justice | Research Methods in Political Science | Research Methods in Social Work | Research Methods in Sociology | Social Statistics | Survey Research | Survey Research Methods for Political Science
September 2005 | 104 pages | SAGE Publications, Inc
This book examines ways to analyze complex surveys, and focuses on the problems of weights and design effects. This new edition incorporates recent practice of analyzing complex survey data, introduces the new analytic approach for categorical data analysis (logistic regression), reviews new software and provides an introduction to the model-based analysis that can be useful analyzing well-designed, relatively small-scale social surveys.
Series Editor’s Introduction
Acknowledgments
1. Introduction
2. Sample Design and Survey Data
3. Complexity of Analyzing Survey Data
4. Strategies for Variance Estimation
5. Preparing for Survey Data Analysis
6. Conducting Survey Data Analysis
7. Concluding Remarks
Notes
References
Index
About the Authors
Good fit for a doctoral seminar on survey research. An increasingly important topic given the widespread reliance in many fields on secondary data from large, complex surveys.
Public Administration Dept, Rutgers University
August 1, 2010