顺序情感模式挖掘预测客户关系管理系统的流失:电信数据的案例研究

Thiago P. Pimentel, R. Goldschmidt
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摘要

竞争激烈的市场促使公司致力于留住客户。因此,预测客户流失(即取消)成为一个重大挑战。序列模式检测是客户流失预测最常用的方法之一。虽然很有希望,但基于这种方法的举措并没有考虑到可能对检测客户流失有用的信息:客户和公司之间互动中的潜在情绪。本研究提出假设,考虑这些信息可能会改善流失预测,因为它们可能表明客户对服务和产品的满意度。因此,本研究旨在评估所制定的假设的有效性。为此,它应用了一种方法,该方法结合顺序模式检测和从客户-公司交互中提取情感来生成流失预测模型。来自电信数据的实验结果证实了所生成模型和所提出假设的充分性。
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Sequential Sentiment Pattern Mining to Predict Churn in CRM Systems: A Case Study with Telecom Data
Competitive markets have driven companies to engage in customer retention. Therefore, anticipating client churn (i.e., cancellation) became a significant challenge. Sequential pattern detection is one of the most popular approaches to the churn prediction problem. Although promising, initiatives based on this approach do not take into account information that can be useful to detect churn: the underlying sentiment in the interactions between client and company. This study raises the hypothesis that considering such information may improve churn prediction, since they may indicate the client's satisfaction level with services and products. Hence, the present study aims to evaluate the validity of the formulated hypothesis. For this purpose, it applies a method that generates churn prediction models from the combination of sequential pattern detection with sentiment extraction from customer-company interactions. Experimental results from telecom data confirm the adequacy of the generated models and of the raised hypothesis.
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