• Corpus ID: 1726210

Applying Data Mining to Insurance Customer Churn Management

  title={Applying Data Mining to Insurance Customer Churn Management},
  author={Reza Allahyari Soeini and Keyvan Vahidy Rodpysh},
According to competition in insurance industry in Iran in recent years and entrance of private sector, keeping customers has become more important for insurer companies and reasons of churning is challenging. Thus in this research, data mining methods is used for Customer churn management (CCM). In first step, customers with equal characteristics were selected by clustering K-means method and in the second step, using churn index and decision tree CART, reasons of customer churn were analyzed… 

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