Comparative Analysis of XAI Techniques on Telecom Churn Prediction Using SHAP and Interpreted ML Partial Dependence
Cem ÖZKURT
Abstract:This paper conducts a comparative analysis of two prominent Explainable Artificial Intelligence (XAI) techniques, SHAP (SHapley Additive exPlanations) and Interpreted ML Partial Dependence, applied to a Telecom Churn dataset. The objective is to assess and contrast these techniques in enhancing transparency and interpretability of machine learning models, specifically in telecom churn prediction. The study emphasizes the significance of XAI in ensuring trust and comprehension in predictive modeling. The method… Show more
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