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Leveraging unstructured call log data for customer churn prediction

Vo School of Science and Technology, RMIT University Vietnam, 702 Nguyen Van Linh Blvd., District 7, HCMC, Viet Nam|
Guandong (8987733300) | Xitong (24450664300); Xu | Nhi N.Y. (57202648571); Liu School of Computer Science, University of Technology, Sydney 15 Broadway, Ultimo, 2007, Australia|

Knowledge-Based Systems Số , năm 2021 (Tập 212, trang -)

ISSN: 9507051

ISSN: 9507051

DOI: 10.1016/j.knosys.2020.106586

Tài liệu thuộc danh mục:

Article

English

Từ khóa: Data Analytics; Forecasting; Large dataset; Machine learning; Predictive analytics; Sales; Service industry; Customer churn prediction; Customer interaction; Customer retention; Customer segments; Financial services industries; Personality traits; Retention strategies; Unstructured data; Data mining
Tóm tắt tiếng anh
Customer retention is important in the financial services industry. Machine learning has been incorporated into customer data analytics to predict client churn risks. Despite its success, existing approaches primarily use only structured data, e.g., demographics and account history. Data mining with unstructured data, e.g., customer interaction, can reveal more insights, which has not been adequately leveraged. In this research, we propose a customer churn prediction model utilizing the unstructured data, which is the spoken contents in phone communication. We collected a large-scale call center dataset with two million calls from more than two hundred thousand customers and conducted extensive experiments. The results show that our model can accurately predict the client churn risks and generate meaningful insights using interpretable machine learning with personality traits and customer segments. We discuss how these insights can help managers develop retention strategies customized for different customer segments. � 2020 Elsevier B.V.

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