This repository contains code and examples for various machine learning tasks.
This folder contains examples and implementations of ensemble learning methods, including:
- Bagging
- Boosting
- Voting
- Random forests
This folder contains examples and implementations of classification algorithms, including:
- Logistic regression
- Decision trees
- Support vector machines
- Naive Bayes
- k-Nearest Neighbors
- Random Forests
This folder contains examples and implementations of regression algorithms, including:
- Linear regression
- Ridge regression
- Lasso regression
- ElasticNet regression
- Support Vector Machine
- Stochastic Gradient Descent
- Random Forest Regression
This folder contains examples and implementations of feature engineering techniques, including:
- Feature scaling and normalization
- Principal component analysis (PCA)
- t-SNE
- Feature selection
This folder contains examples and implementations of hyperparameter tuning methods, including:
- Grid search
- Random search
- Bayesian optimization
This folder contains examples and implementations of clustering algorithms, including:
- k-Means
- Hierarchical clustering
- DBSCAN
- Gaussian mixture models