A data-driven approach with explainable artificial intelligence for customer churn prediction in the telecommunications industry
-
Updated
Dec 17, 2025 - Jupyter Notebook
A data-driven approach with explainable artificial intelligence for customer churn prediction in the telecommunications industry
Perform a comprehensive analysis of over 10,000 Android apps in the Google Play Store. Explore app categories, user reviews, and sentiments. Gain insights to drive growth and retention strategies.
A learning guide for engineers who want to retain more, stress less, and actually enjoy the process.
This project implements a customer churn prediction model using Recency, Frequency, and Monetary (RFM) analysis. It classifies customers into "Churned" or "Retained" categories using a logistic regression model based on customer behavior. The model helps businesses identify at-risk customers and design targeted retention strategies.
Comprehensive customer acquisition systems covering modern lead generation, conversion optimization, and customer onboarding methodologies. Build sustainable customer acquisition processes.
Banking Churn Dashboard - Risk Segmentation & Retention KPIs using Excel, SQL & Power BI.
End-to-end Telco Churn Prediction System with Explainable ML and Context-Aware GenAI Assistant.
AI-Enhanced Customer Retention System (AIECRS) is an AI-based system designed to predict customer churn and suggest retention strategies.
Add a description, image, and links to the retention-strategies topic page so that developers can more easily learn about it.
To associate your repository with the retention-strategies topic, visit your repo's landing page and select "manage topics."