Skip to content

Latest commit

 

History

History
78 lines (51 loc) · 3.78 KB

README.md

File metadata and controls

78 lines (51 loc) · 3.78 KB

Customer Churn Prediction

📌 Problem Definition

The Customer Churn table contains information on all 7,043 customers from a Telecommunications company in California in Q2 2022

Each record represents one customer, and contains details about their demographics, location, tenure, subscription services, status for the quarter (joined, stayed, or churned), and more!

The Zip Code Population table contains complimentary information on the estimated populations for the California zip codes in the Customer Churn table

We need to predict whether the customer will churn, stay or join the company based on the parameters of the dataset.

👀 Screenshots

📓 Overview

Machine Learning Models Applied Accuracy
Random Forest 78.11%
Logistic Regression 78.28%
Naive Bayes Gaussian 36.77%
Decision Tree 77.29%
XGB_Classifier 80.86%

👉 Application

The ability to predict churn before it happens allows businesses to take proactive actions to keep existing customers from churning. This could look like:

  Customer success teams reaching out to those high-risk customers to provide support or to gauge 
  what needs may not be being met.

The advantage of calculating a company's churn rate is that it provides clarity on how well the business is retaining customers, which is a reflection on the quality of the service the business is providing, as well as its usefulness.


✍️ Authors


🔗 Links

Google Colab Kaggle

MIT License


🪪 License

This project follows the MIT LICENSE.


Connect with me

Github     LinkedIn     Twitter     Instagram     Gmail   

(Back to top)