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Churn Forecast Based on Two-step Classification in Security Industry

Churn Forecast Based on Two-step Classification in Security Industry
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摘要 Customer is a determinant factor that decides whether a security company will be alive. As a result, the competition for customers is more and more intense between security companies. In order to avoid profit decrease caused by churn, security companies must find those customers who have the loss risk and make measures to maintain loyal customers. Now it is the question that how to find and analyze those customers. In this paper, a two-step classification method about churn Analysis is proposed and the problem of churn in security is analyzed. Customer is a determinant factor that decides whether a security company will be alive. As a result, the competition for customers is more and more intense between security companies. In order to avoid profit decrease caused by churn, security companies must find those customers who have the loss risk and make measures to maintain loyal customers. Now it is the question that how to find and analyze those customers. In this paper, a two-step classification method about churn Analysis is proposed and the problem of churn in security is analyzed.
机构地区 School of Business
出处 《Intelligent Information Management》 2011年第4期160-165,共6页 智能信息管理(英文)
关键词 CUSTOMER Segmentation CHURN Self-Organize Map Neural Network DECISION TREE Customer Segmentation Churn Self-Organize Map Neural Network Decision Tree
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