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This project explores to predict the client dropout from a weight management program through supervised learning techniques

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vishu2222/Predicting-Attrition-In-Weight-Interventions

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Predicting Client attrition through Supervised learning in weight management courses.

Abstract: This project explores the prediction of client dropout from a weight management program using machine learning algorithms. The project also explores clients survival analysis.

Objectives:

  1. Predict client dropout using supervised machine learning techniques like random forests, Artificial Neural networks, Naieve bayes and Logistic regression.
  2. Survival analysis for understanding client dropout through kaplan-mier curves and COX's proportionality hazards model

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This project explores to predict the client dropout from a weight management program through supervised learning techniques

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