Applied Longitudinal Data Analysis: Modeling Change and Event Occurrence
Judith D. Singer, John B. Willett
- 出版商: Oxford University Press
- 出版日期: 2003-03-27
- 售價: $3,962
- 貴賓價: 9.5 折 $3,764
- 語言: 英文
- 頁數: 644
- 裝訂: Hardcover
- ISBN: 0195152964
- ISBN-13: 9780195152968
Change is constant in everyday life. Infants crawl and then walk, children learn to read and write, teenagers mature in myriad ways, the elderly become frail and forgetful. Beyond these natural processes and events, external forces and interventions instigate and disrupt change: test scores may rise after a coaching course, drug abusers may remain abstinent after residential treatment. By charting changes over time and investigating whether and when events occur, researchers reveal the temporal rhythms of our lives.
Applied Longitudinal Data Analysis is a much-needed professional book for empirical researchers and graduate students in the behavioral, social, and biomedical sciences. It offers the first accessible in-depth presentation of two of today's most popular statistical methods: multilevel models for individual change and hazard/survival models for event occurrence (in both discrete- and continuous-time). Using clear, concise prose and real data sets from published studies, the authors take you step by step through complete analyses, from simple exploratory displays that reveal underlying patterns through sophisticated specifications of complex statistical models.
Applied Longitudinal Data Analysis offers readers a private consultation session with internationally recognized experts and represents a unique contribution to the literature on quantitative empirical methods.
Visit www.ats.ucla.edu/stat/examples/alda.htm for:
- Downloadable data sets
- Library of computer programs in SAS, SPSS, Stata, HLM, MLwiN, and more
- Additional material for data analysis
Table of Contents
Part I1. A Framework for Investigating Change over Time2. Exploring Longitudinal Data on Change3. Introducing the Multilevel Model for Change4. Doing Data Analysis with the Multilevel Model for Change5. Treating TIME More Flexibly6. Modeling Discontinuous and Nonlinear Change7. Examining the Multilevel Model's Error Covariance Structure8. Modeling Change using Covariance Structure AnalysisPart II9. A Framework for Investigating Event Occurrence10. Describing Discrete-Time Event Occurrence Data11. Fitting Basic Discrete-Time Hazard Models12. Extending the Discrete-Time Hazard Model13. Describing Continuous-Time Event Occurrence Data14. Fitting Cox Regression Models15. Extending the Cox Regression ModelNotesReferencesIndex