customer churn prediction prevention in telecom industry using machine learning and survival analysis

Overview

Telco Customer Churn Prediction - Plotly Dash Application

Description

This dash application allows you to predict telco customer churn using machine learninga and survival analysis. Developed with Python and the all codes published on GitHub. Feel free to review and download the repository. You can:

  • predict customer churn based on machine learning using majority voting algorithme that combines more than 9 ML models including neural nets and svm XGboost ...
  • review data analysis
  • dataset exploration
  • predict time to Churn and survival times using survival analysis
  • predict partial effct on outcome of diffrent co-varients and features.

Dataset: https://github.com/IBM/telco-customer-churn-on-icp4d/blob/master/data/Telco-Customer-Churn.csv

Installation and Usage

  1. Install all dependencies listed in requirements.txt - all packages are pip-installable.
  2. Run app.py to launch a local Dash server to host the Dash app. A link will appear in your console; click this to use the Dash app.
Owner
Benaissa Mohamed Fayçal
Benaissa Mohamed Fayçal
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