Insurance company
This project demonstrated how predictive modeling—particularly using logistic regression, ensemble methods, and behavioral flags—can effectively forecast insurance plan purchases. These insights enable data-driven decision-making for product optimization, improving customer satisfaction and business performance.
Modeling Strategy:
1. Base Hypothesis:
Final purchase often mirrors the last quote reviewed → 94% accuracy in training, 53.79% in testing (due to quote history truncation).
2. Enhanced Prediction Model:
Step 1: Logistic Regression + PCA to identify customers likely to change their plan (68% accuracy)
Step 2: For those likely to change, used:
Multinomial Logistic Regression (to predict each of the 7 components separately)
Random Forest Classifier (to predict entire 7-digit vector jointly — achieved 64.85% accuracy)
3. Post-processing:
Replaced unlikely insurance plans (chosen <5% of the time) with most common alternatives based on similar profiles
29 تیر 1404
مهارتهای استفاده شده
29 تیر 1404
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