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Generalized Linear Models

Offered By: statisticsmatt via YouTube

Tags

Linear Regression Courses Logistic Regression Courses Generalized Linear Models Courses

Course Description

Overview

Dive into a comprehensive 3.5-hour tutorial on Generalized Linear Models (GLMs). Explore the background, canonical link functions, and key concepts like likelihood, score, and Fisher information. Master iteratively re-weighted least squares for general link functions. Delve into specific GLM types including probit, logistic (logit), complementary log-log, and Poisson regression. Gain insights into ordinal logistic regression using the proportional odds model and multinomial logistic regression. Enhance your statistical modeling skills with in-depth explanations and practical applications of these powerful techniques.

Syllabus

Generalized Linear Models: Background.
Generalized Linear Models: Canonical Link Function.
Generalized Linear Models: Likelihood, Score, and Fisher Information.
GLM: Iteratively Re-weighted Least Squares for a General Link Function.
Generalized Linear Models: Probit Regression (part 1).
Generalized Linear Models: Probit Regression (part 2).
Generalized Linear Models: Logistic "Logit" Regression (part 1).
Generalized Linear Models: Logistic "Logit" Regression (part 2).
Generalized Linear Models: Logistic "Logit" Regression (part 2).
Generalized Linear Models: Complementary Log Log Regression (part 1).
Generalized Linear Models: Complementary Log Log Regression (part 2).
Generalized Linear Models: Complementary Log Log Regression (part 2).
Generalized Linear Models: Poisson Regression with Canonical Link (part 1).
Generalized Linear Models: Poisson Regression with Canonical Link (part 2).
Ordinal Logistic Regression (Proportional Odds Model).
Multinomial Logistic Regression.


Taught by

statisticsmatt

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