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Loan-Default-Prediction

Using machine learning, predict which companies will default on their loans and explain how different features impact the predictions.


Context

  • This was a take home assessment for a job interview.

Steps

  • Data processing with special focus on handling class imbalance with SMOTE and Random Undersampling
  • Exploratory data analysis
  • Feature engineering
  • Model building and evaluation. Select appropriate performance metric for binary classification task i.e. F2 score (more importance for recall)
  • Model tuning and optimal threshold identification
  • Compare performance of models
  • Feature Importance
  • Test data prediction

Files/Folders

  • code.ipynb: Notebook for the complete ML pipeline
  • data: Folder containing raw train and test data
  • output.csv: output of test predictions