Applied Categorical and Count Data Analysis

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A01=Hua He
A01=Wan Tang
A01=Xin M. Tu
advanced discrete data analysis applications
Author_Hua He
Author_Wan Tang
Author_Xin M. Tu
Binormal Model
biomedical and psychosocial research
biostatistical modelling
Categorical Data Analysis
Category=JMB
Category=PBT
Category=PS
Censoring Time Interval
clinical trials and observation studies
Column Variables
Complementary Log Log
contingency table analysis
Contingency Tables
Continuation Ratio Model
Continuous Survival Time
Count Data Analysis
Data Set
Discrete Survival Times
Empirical Roc Curve
eq_bestseller
eq_isMigrated=1
eq_isMigrated=2
eq_nobargain
eq_non-fiction
eq_science
eq_society-politics
Expected Cell Counts
Gee Estimate
Generalized Logistic Model
Generalized Logit Model
graduate-level biostatistics
IPW Estimate
Log Linear Model
logistic models
logistic regression methods
longitudinal data analysis
longitudinal data inference
Major Depression
Mantel Cox Test
missing data imputation
Missing Values
models for clustered data
Non-diseased Groups
Poisson Log Linear Regression
Poisson Regression Model
Poisson regression models
Poisson regression techniques
Proportional Odds Model
reliability analysis
Roc Curve
statistical analysis of discrete data
statistical models for noncontinuous responses
Structural Zeros
zero-modified count outcomes
Zip Model

Product details

  • ISBN 9780367568276
  • Weight: 860g
  • Dimensions: 178 x 254mm
  • Publication Date: 06 Apr 2023
  • Publisher: Taylor & Francis Ltd
  • Publication City/Country: GB
  • Product Form: Hardback
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Developed from the authors’ graduate-level biostatistics course, Applied Categorical and Count Data Analysis, Second Edition explains how to perform the statistical analysis of discrete data, including categorical and count outcomes. The authors have been teaching categorical data analysis courses at the University of Rochester and Tulane University for more than a decade. This book embodies their decade-long experience and insight in teaching and applying statistical models for categorical and count data. The authors describe the basic ideas underlying each concept, model, and approach to give readers a good grasp of the fundamentals of the methodology without relying on rigorous mathematical arguments.

The second edition is a major revision of the first, adding much new material. It covers classic concepts and popular topics, such as contingency tables, logistic regression models, and Poisson regression models, along with modern areas that include models for zero-modified count outcomes, parametric and semiparametric longitudinal data analysis, reliability analysis, and methods for dealing with missing values. As in the first edition, R, SAS, SPSS, and Stata programming codes are provided for all the examples, enabling readers to immediately experiment with the data in the examples and even adapt or extend the codes to fit data from their own studies.

Designed for a one-semester course for graduate and senior undergraduate students in biostatistics, this self-contained text is also suitable as a self-learning guide for biomedical and psychosocial researchers. It will help readers analyze data with discrete variables in a wide range of biomedical and psychosocial research fields.

Features:

  • Describes the basic ideas underlying each concept and model
  • Includes R, SAS, SPSS and Stata programming codes for all the examples
  • Features significantly expanded Chapters 4, 5, and 8 (Chapters 4-6, and 9 in the second edition
  • Expands discussion for subtle issues in longitudinal and clustered data analysis such as time varying covariates and comparison of generalized linear mixed-effect models with GEE

Wan Tang (Ph.D.) is a Clinical Professor in the Department of Biostatistics and Data Science, Tulane University School of Public Health and Tropical Medicine. Dr. Tang’s research interests include longitudinal data analysis, missing data modeling, structural equation models, causal inference, and nonparametric smoothing methods. He has co-edited a book on modern clinical trials.

Hua He (Ph.D.) is an Associate Professor in Biostatistics in the Department of Epidemiology at Tulane University School of Public Health and Tropical Medicine. Dr. He is a highly experienced biostatistician with expertise in longitudinal data analysis, structural equation models, potential outcome based causal inference, semiparametric models, ROC analysis and their applications to observational studies, and randomized controlled trials across a range of disciplines, especially in the behavioral and social sciences. She has co-authored a series of publications in peer-reviewed journals, one textbook on categorical data analysis and co-edited a book on statistical causal inference and their applications in public health research.

Xin Tu (Ph.D.) is a Professor in the Division of Biostatistics and Bioinformatics, Department of Family Medicine and Public Health, UCSD. Dr. Tu is well versed in statistical methods and their applications to a range of disciplines, particularly within the fields of biomedical, behavioral and social sciences. He has co-authored over 300 peer-reviewed publications, two textbooks on categorical data and applied U-statistics, and co-edited books on modern clinical trials and social network data analysis. He has done important work in the areas of longitudinal data analysis, causal inference, U-statistics, survival analysis with interval censoring and truncation, pooled testing, semiparametric efficiency, and has successfully applied his novel development to addressing important methodological problems in biomedical and psychosocial research.

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