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💼 Credit Bankruptcy Project:

📊 Aim: Predict the likelihood of borrower defaulting on a loan

📚 Dataset: Borrowers' information (credit score, income, loan amount, employment history, etc.)

🎯 Task: Binary classification (classify as "will default" or "will not default")

⚖️ Evaluation metrics: Accuracy, precision, recall, F1-score

📈 Models: Logistic Model, Linear Discriminant Analysis (LDA), Quadratic Discriminant Analysis (QDA), Decision Tree, K-Nearest Neighbor

💰 Excel sheet: Calculates bank profits using the predictive models

🎯 Goal: Develop accurate and reliable loan default prediction model

💼 Benefits: Informed loan approval decisions, effective risk management