Binary Classification Models On Skin Dataset
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Updated
Jun 9, 2018 - Jupyter Notebook
Binary Classification Models On Skin Dataset
Heart Failure Prediction for Harvard University Professional Certificate in Data Science Capstone Project, 2nd Capstone Project using R programming
statistical learning course by dr. Mohammad zade at Sharif Uni. of Tech
Statistical Pattern Recognition (classic machine learning)
Probabilistic graphical models home works (MVA - ENS Cachan)
A synchronous Kernels-only competition
This repository contains Jupyter Notebook file containing the code to compare different sklearn classifiers on a dataset. Then it saves the output .png results in the working folder.
Statistical machine learning
Linear Discriminant Analysis
EEG classification project. Uses a variety of classifiers and methods to parse EEG data.
Introduction to Data Mining
Project of a coursework - Multivariate Analysis (M.Stat Semester 2) under the supervision of Prof. Swagata Nandi. (Project Group : Adrija Saha, Shrayan Roy, Sampurna Mondal)
A simple 1-dimensional Gaussian Naïve Bayes Classifier.
In this project, I use several different classification algorithms to predict whether a patient has breast cancer or not. This project uses K-fold cross validation, logistic regression, LDA, QDA, SVM, and model tuning techniques to achieve a 96% accuracy rate. This project was completed via R Markdown and LaTex.
Sign Language Digit Classification
It is important that credit card companies are able to recognize fraudulent credit card transactions so that customers are not charged for items that they did not purchase. Here, the aim is to analyze the dataset and detect the fradulent transactions.
Simple Machine Learning and Data Science projects as tutorials.
Comparison of several different models for identification of refugee locations following the 2010 Haiti Earthquake.
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