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Incorporating textual information in customer churn prediction models based on a convolutional neural network
Institution:1. Department of Management Control and Information Systems, School of Economics and Business, Universidad de Chile, Diagonal Paraguay 257, Santiago, Chile;2. Facultad de Ingeniería y Ciencias Aplicadas, Universidad de los Andes Monseñor Álvaro del Portillo 12455, Las Condes, Santiago, Chile;3. Data Analytics Laboratory, Faculty of Social Sciences & Solvay Business School, Vrije Universiteit Brussel Pleinlaan 2, Brussels 1050, Belgium;4. Instituto Sistemas Complejos de Ingeniería (ISCI), Chile;1. Department of Entrepreneurship and Logistics, Plekhanov Russian University of Economics, 117997 Moscow, Russia.;2. Department of Logistics, State University of Management, 109542 Moscow, Russia.;3. Department of Computer science and Engineering, KPR Institute of Engineering and Technology, Coimbatore, India.;4. Department of Electronics and Communication Engineering, University College of Engineering, BIT Campus, Tiruchirappalli, India.;5. Department of Electronics and Communication Engineering, K. Ramakrishnan college of Engineering, Tiruchirappalli, India.;6. Department of Computer Science, School of Computer Science Engineering, University of Oviedo, Spain.;7. Federal University of Piauí, Teresina 64049-550, Brazil.
Abstract:This study investigates the value added by incorporating textual data into customer churn prediction (CCP) models. It extends the previous literature by benchmarking convolutional neural networks (CNNs) against current best practices for analyzing textual data in CCP, and, using real life data from a European financial services provider, validates a framework that explains how textual data can be incorporated in a predictive model. First, the results confirm previous research showing that the inclusion of textual data in a CCP model improves its predictive performance. Second, CNNs outperform current best practices for text mining in CCP. Third, textual data are an important source of data for CCP, but unstructured textual data alone cannot create churn prediction models that are competitive with models that use traditional structured data. A calculation of the additional profit obtained from a customer retention campaign through the inclusion of textual information can be used by practitioners directly to help them make more informed decisions on whether to invest in text mining.
Keywords:Customer relationship management  Text mining  Predictive modeling  Deep learning  Financial services industry
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