Description

Book Synopsis
This text presents and describes methods for analysis of longitudinal data, with a strong emphasis on application of these methods to problems in the biomedical and behavioral sciences. Applied Longitudinal Data Analysis is geared more toward users, and not developers, of statistics.

Trade Review
"…a useful resource for students and mathematically inclined practitioners…I would not hesitate to recommend this book…" (Journal of the American Statistical Association, September 2007)

"Comparing this book with…other books on this subject…this is certainly one of the foremost." (Journal of Biopharmaceutical Statistics, Vol. 17, Issue 3, 2007)

"...this book represents a unique and important contribution to the field of psychology." (PsycCRITIQUES, March 14, 2007)

"This innovative classroom-tested book is…highly recommended." (CHOICE, October 2006)



Table of Contents
Preface.

Acknowledgments.

Acronyms.

1. Introduction.

1.1 Advantages of Longitudinal Studies.

1.2 Challenges of Longitudinal Data Analysis.

1.3 Some General Notation.

1.4 Data Layout.

1.5 Analysis Considerations.

1.6 General Approaches.

1.7 The Simplest Longitudinal Analysis.

1.8 Summary.

2. ANOVA Approaches to Longitudinal Data.

2.1Single-Sample Repeated Measures ANOVA.

2.2 Multiple-Sample Repeated Measures ANOVA.

2.3 Illustration.

2.4 Summary.

3. MANOVA Approaches to Longitudinal Data.

3.1 Data Layout for ANOVA versus MANOVA.

3.2 MANOVA for Repeated Measurements.

3.3 MANOVA of Repeated Measures-s Sample Case.

3.4 Illustration.

3.5 Summary.

4. Mixed-Effects Regression Models for Continuous Outcomes.

4.1 Introduction.

4.2 A Simple Linear Regression Model.

4.3 Random Intercept MRM.

4.4 Random Intercept and Trend MRM.

4.5 Matrix Formulation.

4.6 Estimation .

4.7 Summary.

5. Mixed-Effects Polynomial Regression Models.

5.1 Introduction.

5.2 Curvilinear Trend Model.

5.3 Orthogonal Polynomials.

5.4 Summary.

6. Covariance Pattern Models.

6.1 Introduction.

6.2 Covariance Pattern Models.

6.3 Model Selection.

6.4 Example.

6.5 Summary.

7. Mixed Regression Models with Autocorrelated Errors.

7.1 Introduction.

7.2 MRMs with AC Errors.

7.3 Model Selection.

7.4 Example.

7.5 Summary.

8. Generalized Estimating Equations (GEE) Models.

8.1 Introduction.

8.2 Generalized Linear Models (GLMs).

8.3 Generalized Estimating Equations (GEE) Models.

8.4 GEE Estimation.

8.5 Example.

8.6 Summary.

9. Mixed-Effects Regression Models for Binary Outcomes.

9.1 Introduction.

9.2 Logistic Regression Model.

9.3 Probit Regression Models.

9.4 Threshold Concept.

9.5 Mixed-Effects Logistic Regression Model.

9.6 Estimation.

9.7 Illustration.

9.8 Summary.

10. Mixed-Effects Regression Models for Ordinal Outcomes.

10.1 Introduction.

10.2 Mixed-Effects Proportional Odds Model.

10.3 Psychiatric Example.

10.4 Health Services Research Example.

10.5 Summary.

11. Mixed-Effects Regression Models for Nominal Data.

11.1 Mixed-Effects Multinomial Regression Model.

11.2 Health Services Research Example.

1 1.3 Competing Risk Survival Models.

11.4 Summary.

12. Mixed-effects Regression Models for Counts.

12.1 Poisson Regression Model.

12.2 Modified Poisson Models.

12.3 The ZIP Model.

12.4 Mixed-Effects Models for Counts.

12.5 Illustration.

12.6 Summary.

13. Mixed-Effects Regression Models for Three-Level Data.

13.1 Three-Level Mixed-Effects Linear Regression Model.

13.1.1 Illustration.

13.2 Three-Level Mixed-Effects Nonlinear Regression Models.

13.3 Summary.

14. Missing Data in Longitudinal Studies.

14.1 Introduction.

14.2 Missing Data Mechanisms.

14.3 Models and Missing Data Mechanisms.

14.4 Testing MCAR.

14.5 Models for Nonignorable Missingness.

14.6 Summary.

Bibliography.

Topic Index.

Longitudinal Data Analysis

    Product form

    £125.06

    Includes FREE delivery

    RRP £138.95 – you save £13.89 (9%)

    Order before 4pm tomorrow for delivery by Tue 7 Jul 2026.

    A Hardback by Donald Hedeker, Robert D. Gibbons

      Trusted by thousands of customers. See 2,385+ Customer Reviews

      View other formats and editions of Longitudinal Data Analysis by Donald Hedeker

      Publisher: John Wiley & Sons Inc
      Publication Date: 09/05/2006
      ISBN13: 9780471420279, 978-0471420279
      ISBN10: 0471420271
      Also in:
      Mathematics

      Description

      Book Synopsis
      This text presents and describes methods for analysis of longitudinal data, with a strong emphasis on application of these methods to problems in the biomedical and behavioral sciences. Applied Longitudinal Data Analysis is geared more toward users, and not developers, of statistics.

      Trade Review
      "…a useful resource for students and mathematically inclined practitioners…I would not hesitate to recommend this book…" (Journal of the American Statistical Association, September 2007)

      "Comparing this book with…other books on this subject…this is certainly one of the foremost." (Journal of Biopharmaceutical Statistics, Vol. 17, Issue 3, 2007)

      "...this book represents a unique and important contribution to the field of psychology." (PsycCRITIQUES, March 14, 2007)

      "This innovative classroom-tested book is…highly recommended." (CHOICE, October 2006)



      Table of Contents
      Preface.

      Acknowledgments.

      Acronyms.

      1. Introduction.

      1.1 Advantages of Longitudinal Studies.

      1.2 Challenges of Longitudinal Data Analysis.

      1.3 Some General Notation.

      1.4 Data Layout.

      1.5 Analysis Considerations.

      1.6 General Approaches.

      1.7 The Simplest Longitudinal Analysis.

      1.8 Summary.

      2. ANOVA Approaches to Longitudinal Data.

      2.1Single-Sample Repeated Measures ANOVA.

      2.2 Multiple-Sample Repeated Measures ANOVA.

      2.3 Illustration.

      2.4 Summary.

      3. MANOVA Approaches to Longitudinal Data.

      3.1 Data Layout for ANOVA versus MANOVA.

      3.2 MANOVA for Repeated Measurements.

      3.3 MANOVA of Repeated Measures-s Sample Case.

      3.4 Illustration.

      3.5 Summary.

      4. Mixed-Effects Regression Models for Continuous Outcomes.

      4.1 Introduction.

      4.2 A Simple Linear Regression Model.

      4.3 Random Intercept MRM.

      4.4 Random Intercept and Trend MRM.

      4.5 Matrix Formulation.

      4.6 Estimation .

      4.7 Summary.

      5. Mixed-Effects Polynomial Regression Models.

      5.1 Introduction.

      5.2 Curvilinear Trend Model.

      5.3 Orthogonal Polynomials.

      5.4 Summary.

      6. Covariance Pattern Models.

      6.1 Introduction.

      6.2 Covariance Pattern Models.

      6.3 Model Selection.

      6.4 Example.

      6.5 Summary.

      7. Mixed Regression Models with Autocorrelated Errors.

      7.1 Introduction.

      7.2 MRMs with AC Errors.

      7.3 Model Selection.

      7.4 Example.

      7.5 Summary.

      8. Generalized Estimating Equations (GEE) Models.

      8.1 Introduction.

      8.2 Generalized Linear Models (GLMs).

      8.3 Generalized Estimating Equations (GEE) Models.

      8.4 GEE Estimation.

      8.5 Example.

      8.6 Summary.

      9. Mixed-Effects Regression Models for Binary Outcomes.

      9.1 Introduction.

      9.2 Logistic Regression Model.

      9.3 Probit Regression Models.

      9.4 Threshold Concept.

      9.5 Mixed-Effects Logistic Regression Model.

      9.6 Estimation.

      9.7 Illustration.

      9.8 Summary.

      10. Mixed-Effects Regression Models for Ordinal Outcomes.

      10.1 Introduction.

      10.2 Mixed-Effects Proportional Odds Model.

      10.3 Psychiatric Example.

      10.4 Health Services Research Example.

      10.5 Summary.

      11. Mixed-Effects Regression Models for Nominal Data.

      11.1 Mixed-Effects Multinomial Regression Model.

      11.2 Health Services Research Example.

      1 1.3 Competing Risk Survival Models.

      11.4 Summary.

      12. Mixed-effects Regression Models for Counts.

      12.1 Poisson Regression Model.

      12.2 Modified Poisson Models.

      12.3 The ZIP Model.

      12.4 Mixed-Effects Models for Counts.

      12.5 Illustration.

      12.6 Summary.

      13. Mixed-Effects Regression Models for Three-Level Data.

      13.1 Three-Level Mixed-Effects Linear Regression Model.

      13.1.1 Illustration.

      13.2 Three-Level Mixed-Effects Nonlinear Regression Models.

      13.3 Summary.

      14. Missing Data in Longitudinal Studies.

      14.1 Introduction.

      14.2 Missing Data Mechanisms.

      14.3 Models and Missing Data Mechanisms.

      14.4 Testing MCAR.

      14.5 Models for Nonignorable Missingness.

      14.6 Summary.

      Bibliography.

      Topic Index.

      Recently viewed products

      © 2026 Book Curl

        • American Express
        • Apple Pay
        • Diners Club
        • Discover
        • Google Pay
        • Maestro
        • Mastercard
        • PayPal
        • Shop Pay
        • Union Pay
        • Visa

        Login

        Forgot your password?

        Don't have an account yet?
        Create account