Propensity Score Analysis

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advanced causal inference techniques
advanced quantitative methods
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B01=Haiyan Bai
B01=Wei Pan
Category1=Non-Fiction
Category=JHBC
Category=JMB
Category=PBT
causal analysis
causal inferences
COP=United States
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estimation
Language_English
longitudinal data analysis
matching
missing data methods
multilevel modelling
observational data
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Price_€50 to €100
propensity score analysis
propensity scores
PS=Active
PSA
quasi-experimental design
quasi-experimental research
research methods
softlaunch
statistical programming examples
statistics
unobserved confounding control

Product details

  • ISBN 9781462519491
  • Weight: 700g
  • Dimensions: 156 x 234mm
  • Publication Date: 18 May 2015
  • Publisher: Guilford Publications
  • Publication City/Country: US
  • Product Form: Hardback
  • Language: English
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This book is designed to help researchers better design and analyze observational data from quasi-experimental studies and improve the validity of research on causal claims. It provides clear guidance on the use of different propensity score analysis (PSA) methods, from the fundamentals to complex, cutting-edge techniques. Experts in the field introduce underlying concepts and current issues and review relevant software programs for PSA. The book addresses the steps in propensity score estimation, including the use of generalized boosted models, how to identify which matching methods work best with specific types of data, and the evaluation of balance results on key background covariates after matching. Also covered are applications of PSA with complex data, working with missing data, controlling for unobserved confounding, and the extension of PSA to prognostic score analysis for causal inference. User-friendly features include statistical program codes and application examples. Data and software code for the examples are available at the companion website (www.guilford.com/pan-materials).

Wei Pan, PhD, is Associate Professor and Biostatistician in the School of Nursing at Duke University. His research interests include causal inference (confounding, propensity score analysis, and resampling), advanced modeling (multilevel, structural, and mediation and moderation), meta-analysis, and their applications in the social, behavioral, and health sciences. Dr. Pan has published over 50 articles in refereed journals, as well as other publications, and has served on the editorial boards of several journals.He is the recipient of several awards for excellence in research, teaching, and service.

Haiyan Bai, PhD, is Associate Professor of Quantitative Research Methodology at the University of Central Florida. Her interests include resampling methods, propensity score analysis, research design, measurement and evaluation, and the applications of statistical methods in the educational and behavioral sciences. She has published a book on resampling methods as well as numerous articles in refereed journals, and has served on the editorial boards of several journals. Dr. Bai is a Fellow of the Academy for Teaching, Learning, and Leadership and a Faculty Fellow at the University of Central Florida, where she has been the recipient of several awards for excellence in research and teaching.