Machine learning basics
This repository contains implementations of basic machine learning algorithms in plain Python (Python Version 3.6+). All algorithms are implemented from scratch without using additional machine learning libraries. The intention of these notebooks is to provide a basic understanding of the algorithms and their underlying structure, not to provide the most efficient implementations.
- Bayesian Linear Regression
- Decision tree for classification
- Decision tree for regression
- k-nearest-neighbor
- k-Means clustering
- Linear Regression
- Logistic Regression
- Multinomial Logistic Regression
- Perceptron
- Principal Component Analysis
- Simple neural network with one hidden layer
- Softmax regression
- Support vector machines
Data preprocessing
After several requests I started preparing notebooks on how to preprocess datasets for machine learning. Within the next months I will add one notebook for each kind of dataset (text, images, ...). As before, the intention of these notebooks is to provide a basic understanding of the preprocessing steps, not to provide the most efficient implementations.
Live demo
Run the notebooks online without having to clone the repository or install jupyter: .
Note: this does not work for the data_preprocessing.ipynb
and image_preprocessing.ipynb
notebooks because they require downloading a dataset first.
Feedback
If you have a favorite algorithm that should be included or spot a mistake in one of the notebooks, please let me know by creating a new issue.
License
See the LICENSE file for license rights and limitations (MIT).