Skip to content

yoonkt200/ml-theory-python

Repository files navigation

ml-theory-python

This repository summarize the basic algorithm and theory in machine learning area. And there are some implementation code(mathematics, statistics, etc..) using Python. The reason for the existence of each chapter is for study only.


Table of Contents

  • 1. Statistics
    • probability
    • distribution
    • estimation
    • testing
    • bayesian statistics
    • entropy
    • time series
  • 2. Regression
    • linear regression
    • logistic regression
    • optimizer
    • regularization
  • 3. Linear Algebra
    • background knowledge
    • dimensionality reduction
    • matrix factorization
  • 4. Neural Network
    • Pytorch Examples
      • basic
      • regression
      • logistic regression
      • fnn
    • pending..
  • 5. Recommender
    • Factorization Machine
    • Factorization Machine vector analysis
    • Wide and Deep
    • pending..
  • 6. MAB
    • E-greedy
    • Thompson Sampling
    • pending..

Getting Started

$ git clone https://github.com/yoonkt200/ml-theory-python.git
$ set python path to `venv/` folder
$ run ml-theory-python/{chapter-name}/{algorithm-name.py or .ipynb}/

Dependencies


Information

About

Python Implementation for Machine Learning Learners.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published