Skip to content

vishwapardeshi/Machine-Learning-Projects

Repository files navigation

Machine Learning Projects

My tryst with Machine Learning began with a love for Statistics from high school. During my Computer Engineering undergraduate program, I became comfortable with Machine Learning and since then I have worked on several mini-projects which are contained in this repository.

This repository contains X mini projects in Python, R & Spark.

Repository Outline

The repository contains mini-projects on the following machine learning techniques:

  1. Linear Regression - Simple linear regression, multiple linear regression, non-linear transformation of predictors
  2. Logistic Regression
  3. Linear & Quadratic Discriminant Analysis
  4. K-Nearest Neighbour
  5. Polynomial Regression
  6. Splines
  7. GAM
  8. Decision Trees - Regression, Classification, Bagging, Boosting
  9. Support Vector Machines
  10. Principal Component Analysis
  11. K-means Clustering
  12. Ensemble Models

References

  1. Introduction to Statistical Learning by Gareth James • Daniela Witten • Trevor Hastie • Robert Tibshirani
  2. Hands on Machine Learning with Scikit Learn & Tensorflow

About

Contains machine learning mini-projects in Python & R

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published