Skip to content

Notes included mathematical proofs related to Machine Learning or Statistical Learning.

Notifications You must be signed in to change notification settings

eugene123tw/ISLR_notes

Repository files navigation

Notes for Machine Learning

Most of the materials come from Machine Learning written by Kevin Murphy, An Introduction to Statistical Learning, The Elements of Statistical Learning written by Robert Tibshirani and Trevor Hastie, Introduction to Operation Research, Deep Learning.

Contents:

  • Chapter 2: Statistical Learning
  • Chapter 3: Linear Regression
  • Chapter 4: Classifications
  • Chapter 5: Resampling Methods
  • Chapter 6: Model Selection and Regularization
  • Chapter 11: Neural Network
  • Optimization: Non-Linear Programming

TODO:

  • Chapter 11: Neural Network
    1. Computational graph
    2. Batch Normalization derivative in computational graph
  • Nonlinear Programming
    1. The Gradient Search Procedure

About

Notes included mathematical proofs related to Machine Learning or Statistical Learning.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published