Building a binary classification model to determine whether or not an employee in the tech industry chooses to seek treatment for a mental health condition
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Updated
Mar 15, 2018
Building a binary classification model to determine whether or not an employee in the tech industry chooses to seek treatment for a mental health condition
factor selection, exploratory data analysis, statistical learning on both qualitative and quantitative data in R
Machine learning model for: 1) sentiment analysis for online food reviews, 2) classify texts into topics, 3) predicting volcano eruption, 4) classify human genes
KNN Algorithms, Naive Bayes, Classification Tree, PCA Implementations
Customer Churn Analysis in R: Logistic, Classification Tree, XGBoost, Random Forest.
In this report, the goal is to predict Attrition by selecting a set of explanatory variables and building a random forest classification tree.
Compilación de trabajos realizados en la asignatura de Machine Learning con Python
Tree based algorithm in machine learning including both theory and codes. Topics including from decision tree regression and classification to random forest tree and classification. Grid Search is also included.
Solution for ENS - Societe Generale Challenge (1st place).
Exploratory data analysis and classification tree algorithm (sklearn).
Recursive Partitioning and Regression Trees adapted to Random Forests with more split functions
R | Classification Project
evaluating credit default rate using statistical machine learning methods
Built and tested 6 supervised machine learning algorithm to develop a predictive classification model to classify 13000+ projects as success or failure.
Exemplo de aprendizagem de máquina por K-ésimo Vizinho mais Próximo usando Python
A curated list of gradient boosting research papers with implementations.
AutoValuate: A machine learning-driven tool for classifying used car prices as high or low, enabling smarter decisions in the car resale market.
This project is part of the Statistical Learning course.
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