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Data Analysis Using Regression and Multilevel/Hierarchical Models

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Part of Analytical Methods for Social Research

  • Date Published: December 2006
  • availability: In stock
  • format: Paperback
  • isbn: 9780521686891
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About the Authors
  • Data Analysis Using Regression and Multilevel/Hierarchical Models is a comprehensive manual for the applied researcher who wants to perform data analysis using linear and nonlinear regression and multilevel models. The book introduces a wide variety of models, whilst at the same time instructing the reader in how to fit these models using available software packages. The book illustrates the concepts by working through scores of real data examples that have arisen from the authors’ own applied research, with programming codes provided for each one. Topics covered include causal inference, including regression, poststratification, matching, regression discontinuity, and instrumental variables, as well as multilevel logistic regression and missing-data imputation. Practical tips regarding building, fitting, and understanding are provided throughout. Author resource page: http://www.stat.columbia.edu/~gelman/arm/

    • Discusses a wide range of linear and non-linear multilevel models
    • Provides R and Winbugs computer codes and contains notes on using SASS and STATA
    • Analyses illustrated with dozens of graphs of data and fitted models
    • Dozens of examples, almost all coming from Gelman/Hill's own applied research
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    Reviews & endorsements

    "Data Analysis Using Regression and Multilevel/Hierarchical Models … careful yet mathematically accessible style is generously illustrated with examples and graphical displays, making it ideal for either classroom use or self-study. It appears destined to adorn the shelves of a great many applied statisticians and social scientists for years to come."
    Brad Carlin, University of Minnesota

    "Gelman and Hill have written what may be the first truly modern book on modeling. Containing practical as well as methodological insights into both Bayesian and traditional approaches, Data Analysis Using Regression and Multilevel/Hierarchical Models provides useful guidance into the process of building and evaluating models. For the social scientist and other applied statisticians interested in linear and logistic regression, causal inference, and hierarchical models, it should prove invaluable either as a classroom text or as an addition to the research bookshelf."
    Richard De Veaux, Williams College

    "The theme of Gelman and Hill's engaging and nontechnical introduction to statistical modeling is 'Be flexible.' Using a broad array of examples written in R and WinBugs, the authors illustrate the many ways in which readers can build more flexibility into their predictive and causal models. This hands-on textbook is sure to become a popular choice in applied regression courses."
    Donald Green, Yale University

    "Simply put, Data Analysis Using Regression and Multilevel/Hierarchical Models is the best place to learn how to do serious empirical research. Gelman and Hill have written a much needed book that is sophisticated about research design without being technical. Data Analysis Using Regression and Multilevel/Hierarchical Models is destined to be a classic!"
    Alex Tabarrok, George Mason University

    "a detailed, carefully written exposition of the modelling challenge, using numerous convincing examples, and always paying careful attention to the practical aspects of modeling. I recommend it very warmly."
    Journal of Applied Statistics

    "Gelman and Hill's book is an excellent intermediate text that would be very useful for researchers interested in multilevel modeling... This book gives a wealth of information for anyone interested in multilevel modeling and seems destined to be a classic."
    Brandon K. Vaughn, Journal of Eductional Measurement

    "With their new book, Data Analysis Using Regression and Multilevel/Hierarchical Models, Drs. Gelman and Hill have raised the bar for what a book on applied statistical modeling should seek to accomplish. The book is extraordinarily broad in scope, modern in its approach and philosophy, and ambitious in its goals... I am tremendously impressed with this book and highly recommend it. Data Analysis Using Regression and Multilevel/Hierarchical Models deserves to be widely read by applied statisticians and practicing researchers, especially in the social sciences. Instructors considering textbooks for courses on the practice of statistical modeling should move this book to the top of their list."
    Daniel B. Hall, Journal of the American Statistical Association

    "Data Analysis Using Regression and Multilevel/Hierarchical Models is the book I wish I had in graduate school."
    Timothy Hellwig, The Political Methodologist

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    Customer reviews

    30th Dec 2018 by Refrancesco6

    This page is very important for the estadistics and develop in my course

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    Product details

    • Date Published: December 2006
    • format: Paperback
    • isbn: 9780521686891
    • length: 648 pages
    • dimensions: 254 x 179 x 35 mm
    • weight: 1.09kg
    • contains: 160 exercises
    • availability: In stock
  • Table of Contents

    1. Why?
    2. Concepts and methods from basic probability and statistics
    Part I. A. Single-Level Regression:
    3. Linear regression: the basics
    4. Linear regression: before and after fitting the model
    5. Logistic regression
    6. Generalized linear models
    Part I. B. Working with Regression Inferences:
    7. Simulation of probability models and statistical inferences
    8. Simulation for checking statistical procedures and model fits
    9. Causal inference using regression on the treatment variable
    10. Causal inference using more advanced models
    Part II. A. Multilevel Regression:
    11. Multilevel structures
    12. Multilevel linear models: the basics
    13. Multilevel linear models: varying slopes, non-nested models and other complexities
    14. Multilevel logistic regression
    15. Multilevel generalized linear models
    Part II. B. Fitting Multilevel Models:
    16. Multilevel modeling in bugs and R: the basics
    17. Fitting multilevel linear and generalized linear models in bugs and R
    18. Likelihood and Bayesian inference and computation
    19. Debugging and speeding convergence
    Part III. From Data Collection to Model Understanding to Model Checking:
    20. Sample size and power calculations
    21. Understanding and summarizing the fitted models
    22. Analysis of variance
    23. Causal inference using multilevel models
    24. Model checking and comparison
    25. Missing data imputation
    Appendixes: A. Six quick tips to improve your regression modeling
    B. Statistical graphics for research and presentation
    C. Software
    References.

  • Authors

    Andrew Gelman, Columbia University, New York
    Andrew Gelman is Professor of Statistics and Professor of Political Science at Columbia University. He has published over 150 articles in statistical theory, methods, and computation, and in applications areas including decision analysis, survey sampling, political science, public health, and policy. His other books are Bayesian Data Analysis (1995, second edition 2003) and Teaching Statistics: A Bag of Tricks (2002).

    Jennifer Hill, Columbia University, New York
    Jennifer Hill is Assistant Professor of Public Affairs in the Department of International and Public Affairs at Columbia University. She has co-authored articles that have appeared in the Journal of the American Statistical Association, American Political Science Review, American Journal of Public Health, Developmental Psychology, the Economic Journal and the Journal of Policy Analysis and Management, among others.

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