Customer churn prediction is a critical task in business analytics aimed at identifying customers likely to discontinue a service or product. This project leverages machine learning models to predict customer churn using theΒ Churn Modelling.csv
Β dataset, encompassing demographic, financial, and behavioral features. The project is divided into six key parts:
k = 9
Β using cross-validation.GridSearchCV
Β for maximum efficiency.βββ Data/ β βββ Churn_Modelling.csv βββ Analysis/ β βββ scripts/ β β βββ data_cleansing.py β β βββ knn_model.py β β βββ decision_tree_model.py β β βββ svm_model.py β β βββ neural_network_model.py βββ Visualizations/ β βββ roc_curves/ βββ Reports/ β βββ Customer_Churn_Analysis.pdf βββ README.md
For a comprehensive understanding of the project, including detailed methodologies, visualizations, and results, refer to the full report:Β Customer Churn Analysis Report.
If you’d like to contribute, suggest improvements, or have any questions, feel free to open an issue and please reach out viaΒ LinkedIn
Author: Syed Faizan
Masterβs Student in Data Analytics and Machine Learning
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