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1
Introduction
2
Recap
3
The exponential family
4
Probable discredited models
5
Logistic regression
6
Logistic regression and classification
7
Newtons method
8
Case study
9
App recommendation
10
Classification
11
Sparsity
Description:
Explore logistic regression and generalized linear models in this comprehensive lecture. Delve into key topics including the exponential family, probable discredited models, and Newton's method. Learn how to apply logistic regression for classification tasks and understand its role in app recommendation systems. Examine case studies and discover the importance of sparsity in model development. Gain valuable insights into these fundamental machine learning concepts and their practical applications.

Logistic Regression and Generalized Linear Models

Pascal Poupart
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