Nadeem Shafique Butt

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Categorical Data Analysis

Courses

Aims and Objectives
The main ideas of the course are to develop a critical approach to the analysis of categorical data often encountered in health sciences research. This process will include gaining some technical insight (mechanics of the statistical methodology  behind the ideas) as well as applications of these methods in health-related data. Some of the main objectives of this course are:

To develop an intuitive and critical approach to the analysis of frequency tables.

To examine basic ideas and methods of generalized linear models (e.g. Logistic regression, Multinomial Logistic Regression, Ordinal Logistic Regression and Log Linear Models)
To gain experience in categorical data analysis using statistical software packages (SPSS/Epi,etc.)

Quick review:

Some of the basic sampling techniques, variable types, probability distributions relevant in our course (binomial, multinomial, Poisson, etc.), expectation, concept of likelihood,  tests for one-way tables
Contingency tables: Review of × 2 tables and r × c tables, tests  for independence and homogeneity of proportions, Fisher's exact test, McNemar's test. Introduction to three-way tables, full and conditional independence, collapsing. (Table Analysis)
Introduction to generalized linear models: Logistic regression, interpretation of coefficients, model selection, diagnostics, goodness of fit. Introduction of multinomial regression, polytomous regression, poisson regression.
Loglinear models: for multi-way tables
Special topics:

Books:

Agresti, Alan (2002) Categorical Data Analysis, Second Edition, Willey
Agresti, Alan (2007) An Introdiction to Categorical Data Analysis, Welley
Hosmer, D.W. and Lemeshow, S. (2000) Applied Logistic Regression, Second Edition, Wiley

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