SAGE

Research Methods, Statistics & Evaluation – Spring 2019

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SAGE 800.818.7243 OR 805.499.9774 6 A.M. TO 5 P.M. PT FAX: 805.375.5291 58 TEXTBOOKS & HANDBOOKS Intermediate/Advanced Statistics - Bayesian A STUDENT'S GUIDE TO BAYESIAN STATISTICS Ben Lambert, University of Oxford, U.K. Supported by a wealth of learning features, exercises, and visual elements as well as online video tutorials and interactive simulations, this book is the first student-focused introduction to Bayesian statistics. Without sacrificing technical integrity for the sake of simplicity, the author draws upon accessible, student-friendly language to provide approachable instruction perfectly aimed at statistics and Bayesian newcomers. The book's logical structure introduces and builds upon key concepts in a gradual way and slowly acclimatises students to using R, Stan, and JAGS software. CONTENTS 1. How to best use this book / PART I: AN INTRODUCTION TO BAYESIAN INFERENCE / 2. The subjective worlds of Frequentist and Bayesian statistics / 3. Probability - the nuts and bolts of Bayesian inference / PART II: UNDERSTANDING THE BAYESIAN FORMULA / 4. The posterior - the goal of Bayesian inference / 5. Likelihoods / 6. Priors / 7. The devil's in the denominator / PART III: ANALYTIC BAYESIAN METHODS / 8. An introduction to distributions for the mathematically-un-inclined / 9. Conjugate priors and their place in Bayesian analysis / 10. Evaluation of model fit and hypothesis testing / 11. Making Bayesian analysis objective? / PART IV: A PRACTICAL GUIDE TO DOING REAL LIFE BAYESIAN ANALYSIS: COMPUTATIONAL BAYES / 12. Leaving conjugates behind: Markov Chain Monte Carlo / 13. The Metropolis algorithm / 14. Gibbs sampling / 15. Hamiltonian Monte Carlo / 16. Stan and JAGS / PART V: REGRESSION ANALYSIS AND HIERARCHICAL MODELS / 17. Hierarchical models / 18. Linear regression models / 19. Generalised linear models PAPERBACK ISBN: 978-1-4739-1636-4 • ©2019 • 520 PAGES • online resources • Intermediate/Advanced Statistics - Propensity Score Analysis ADVANCED QUANTITATIVE TECHNIQUES IN THE SOCIAL SCIENCES SERIES PROPENSITY SCORE ANALYSIS: Statistical Methods and Applications SECOND EDITION Shenyang Guo, Washington University in St. Louis • Mark W. Fraser, University of North Carolina at Chapel Hill Propensity Score Analysis provides readers with a systematic review of the origins, history, and statistical foundations of PSA and illustrates how it can be used for solving evaluation and causal-inference problems. With a strong focus on practical applications, the authors explore various strategies for employing PSA. CONTENTS 1: Introduction / 2: Counterfactual Framework and Assumptions / 3: Conventional Methods for Data Balancing / 4: Sample Selection and Related Models / 5: Propensity Score Matching and Related Models / 6: Propensity Score Subclassification / Chapter 7: Propensity Score Weighting / 8: Matching Estimators / 9: Propensity Score Analysis with Nonparametric Regression / 10: Propensity Score Analysis of Categorical or Continuous Treatments / 11: Selection Bias and Sensitivity Analysis / 12: Concluding Remarks HARDCOVER ISBN: 978-1-4522-3500-4 • ©2015 • 448 PAGES • online resources • PROPENSITY SCORE METHODS AND APPLICATIONS VOLUME 178 Haiyan Bai, University of Central Florida • M. H. Clark, University of Central Florida PAPERBACK: $22.00 • ISBN: 978-1-5063-7805-3 • ©2019 • 112 PAGES SEE ALSO THE QUANTIATIVE APPLICATIONS IN THE SOCIAL SCIENCES SECTION ON PAGE 61 FOR MORE INFORMATION ON THIS TEXT. Intermediate/Advanced Statistics - Regression/Linear Modeling NEW! / ADVANCED QUANTITATIVE TECHNIQUES IN THE SOCIAL SCIENCES SERIES SPATIAL REGRESSION MODELS FOR THE SOCIAL SCIENCES Guangqing Chi, The Pennsylvania State University • Jun Zhu, University of Wisconsin, Madison Focusing on the methods that are commonly used by social scientists, this text introduces the regression methods for analyzing spatial data. The authors explain what each method is and when and how to apply it, connecting concepts to social science research topics. Avoiding mathematical formulas and symbols as much as possible, the book introduces the methods in an easy-to-follow manner, providing comprehensive coverage and using the same social science example throughout to demonstrate the applications of each method and what the results can tell us. HARDCOVER ISBN: 978-1-5443-0207-2 • MAY 2019 • 272 PAGES • online resources

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