jalajthanaki/credit-risk-modelling
Credit Risk analysis by using Python and ML
Predicts 2-year loan default risk using scikit-learn classification models with pandas/numpy data processing. Leverages Jupyter notebooks for interactive model development and visualization via matplotlib/seaborn. Built on a standard Python ML stack for end-to-end risk assessment from data exploration through model evaluation.
176 stars. No commits in the last 6 months.
Stars
176
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116
Language
Jupyter Notebook
License
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Category
Last pushed
Nov 20, 2017
Commits (30d)
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