A fast xgboost feature selection algorithm
-
Updated
Apr 1, 2021 - Python
A fast xgboost feature selection algorithm
All Relevant Feature Selection
Feature selection on a Bitcoin Dataset
A Human Resource Analytics project that addresses the question "Why do employees leave?". Also helps us better understand factors for employee satisfaction
The feature of interest is whether or not a customer buys a caravan insurance, based on socio-demographic factors and ownership of other insurance policies; and to build profile of a typical customer.
Analytical tool to help the company decide whether the employee will stay or not
Modelling and prediction of default + deployment via AWS Sagemaker
This web application is motivated by Baymax of the animated movie Big Hero 6. It detects Valvular Heart disorder i.e. damage or defect in one of the four heart valves. On the Machine Learning side, I have used AutoML from the deep learning platform H2O. And the interactive application is build in RShiny.
Classification model using R to predict the biodegradability of various chemicals
This repository proposes several methods to infer relevant associations within a set of features.
Project for IST687 Applied Data Science- School of Information Studies, Syracuse University
Sales Prediction for Rossmann Pharmaceutics database using Machine Learning regression modeling
Identify the most important variables that contribute to the level of sustainability of schools using supervised machine learning. Use the importance to assign a weight to each characteristic and calculate a sustainability index for each school.
ML-based prediction of NSCLC recurrence with gene expression data
Machine learning model developed in R to predict which water pumps across Tanzania are not working properly
Data Mining exercise of epitope prediction and classification of virus based on protein data
CART, K-Means, Apriori, Adaboost, RFE; models using Anti-cancer peptides vs Human proteins
Credit Scoring from inputs to interpretation, see Streamlit_app repo to get to the dashboard
Add a description, image, and links to the boruta topic page so that developers can more easily learn about it.
To associate your repository with the boruta topic, visit your repo's landing page and select "manage topics."