Credit Risk Analysis utilizing imbalanced classification machine learning models
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Updated
Feb 10, 2022 - Jupyter Notebook
Credit Risk Analysis utilizing imbalanced classification machine learning models
Machine learning models for predicting credit risk in LendingClub dataset.
Supervised scikit-learn machine learning models using several sampling techniques.
Supervised Machine Learning and Credit Risk
Data preparation, statistical reasoning and machine learning are used to solve an unbalanced classification problem. Different techniques are employed to train and evaluate models with unbalanced classes.
A Deep Learning analysis to predict success of charity campaigns
Uses several machine learning models to predict credit risk.
The purpose of this study is to recommend whether PureLending should use machine learning to predict credit risk. Several machine learning models are built employing different techniques, then they are compared and analyzed to provide the recommendation.
Supervised Machine Learning
Predicts credit risk of individuals based on information within their application utilizing supervised machine learning models
Extract data provided by lending club, and transform it to be useable by predictive models.
Credit Risk Analysis utilizing imbalanced classification machine learning models
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