tomasspangelo / UCSD-Project-Spring2020

Jupyter notebook files for a machine learning project in the course COGS 118A Supervised Machine Learning Algorithms. In short the object of this project was to empirically test different machine learning algorithms using a variety of data sets from the UCI Machine Learning Repository.

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

UCSD_project_spring2020

Jupyter notebook files for a machine learning project in the course COGS 118A Supervised Machine Learning Algorithms. In short the object of this project was to empirically test different machine learning algorithms using a variety of data sets from the UCI Machine Learning Repository.

  • Resulting paper from project: COGS118A___Final_Project_HEADLINEFIXED.pdf
  • Folder Tomasspangelo.finalproject contains all jupyter notebook files and data. Each jupyter notebook corresponds to a data set, where the data set is prepared and preprocessed and then the three machine learning algorithms k-NN, random forests and suport vector machine are run on the dataset. Results are presented in each notebook at the bottom using heatmaps etc. from parameter tuning using cross validation.

About

Jupyter notebook files for a machine learning project in the course COGS 118A Supervised Machine Learning Algorithms. In short the object of this project was to empirically test different machine learning algorithms using a variety of data sets from the UCI Machine Learning Repository.


Languages

Language:Jupyter Notebook 100.0%