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Customer Churn Estimation with Loyalty and Novelty Effects (PYTHON)
extension to the Hardie & Fader Model to include time-varying churn rates
Customer Churn Estimation (PYTHON)
predict customer survival (original Hardie & Fader CLTV Model)
Scrubbing and Pre-processing Raw Data (PYTHON)
preparing raw mortgage data for use in regression analysis
Modeling Mortgage Defaults - Part 1: Logistic Regression (R)
comprehensive overview of data analysis and model creation process, using real mortgage data
Modeling Mortgage Defaults - Part 2: Logistic Transition Models (R)
exploration of linked logistic models to capture time-varying transition probabilities
Modeling Mortgage Defaults - Part 3: Cox Regression and Hazard Rate Models (R)
exploration of a competing risks hazard rate model to predict future portfolio composition / exit attribution
Simple Friend Recommender (PYTHON)
predict friend candidates based on proximity and popularity
Emerging Market ETF Analysis (R)
analysis of Emerging Market ETF returns and optimized allocation % in in US Equity portfolio
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