My Account
×
Forgot Your Password?
LogIn Now
Home
Courses
Faculty
Contact
Go to Main Website
LogIn
Home
Courses
Faculty
Contact
Go to Main Website
LogIn
Categorical data analysis (Stat-411) Self Support
Week 6: GLMs for Binary Data: Linear Probability Model, Logit Model and Probit Model.
Week 6: GLMs for Binary Data: Linear Probability Model, Logit Model and Probit Model.
Download Files
1588537704-w6.pdf (1.99 MB )
PREV
NEXT
Course Material
Week 1: Categorical data and its types, Probability distribution for categorical data
Week 2: Two-way Contingency Tables, Probability Structure for Contingency Tables.
Week 3: Comparing Proportions in Two-by-Two Tables.
Week 4: Independence: Chi-square Test and Fisher's Exact Test.
Week 5: Generalized Linear Models (GLMs) and its Components.
Week 6: GLMs for Binary Data: Linear Probability Model, Logit Model and Probit Model.
Week 7: GLMs for Count Data: Log-linear Model. Model Comparison Using the Deviance.
Week 8: The Newton-Raphson Algorithm Fits GLMs. Wald and Likelihood Ratio Inference Use the Likelihood Function.
Week 9: Logistic Regression: Binary Logistic Regression.
Week 10: Multinomial Logistic Regression.
Week 11: Multinomiall Logistic Regression.
Week 12: Ordinal Logistic Regression
Week 13: Poisson Regression
Week 14: Log-linear Models for Contingency Tables.
Week 15: Models for Matched Pairs.
Week 16: Analyzing Repeated Categorical Response Data.
Chapters
16
Department
Statistics
Teacher
Syed Muhammad Shoaib hassan