A data-driven framework for investigating customer retention

This study presents a data-driven simulation framework in order to understand customer behaviour and therefore improve customer retention. The overarching system design methodology used for this study is aligned with the design science paradigm. The Social Media Domain Analysis (SoMeDoA) approach is adopted and evaluated to build a model on the determinants of customer satisfaction in the mobile services industry. Furthermore, the most popular machine learning algorithms for analysing customer churn are applied to analyse customer retention based on the derived determinants. Finally, a data-driven approach for agent-based modelling is proposed to investigate the social effect of customer retention. The key contribution of this study is the customer agent decision trees (CADET) approach and a data-driven approach for Agent-Based Modelling (ABM). The CADET approach is applied to a dataset provided by a UK mobile services company. One of the major findings of using the CADET approach to investigate customer retention is that social influence, specifically word of mouth has an impact on customer retention. The second contribution of this study is the method used to uncover customer satisfaction determinants. The SoMeDoA framework was applied to uncover determinants of customer satisfaction in the mobile services industry. Customer service, coverage quality and price are found to be key determinants of customer satisfaction in the mobile

[1]  Cao Kang,et al.  Customer Churn Prediction Based on SVM-RFE , 2008, 2008 International Seminar on Business and Information Management.

[2]  Raymond R. Hill,et al.  An initial agent behaviour modelling and definition methodology as applied to unmanned aerial vehicle simulations , 2008, Int. J. Simul. Process. Model..

[3]  Konstantinos I. Diamantaras,et al.  A comparison of machine learning techniques for customer churn prediction , 2015, Simul. Model. Pract. Theory.

[4]  B. J. Oates,et al.  Researching Information Systems and Computing , 2005 .

[5]  Gouri Gosawi,et al.  Application Of Data Mining , 2014 .

[6]  András Vág,et al.  Simulating changing consumer preferences: A dynamic conjoint model , 2007 .

[7]  Ahmad Baraani-Dastjerdi,et al.  Agent-based modeling of consumer decision making process based on power distance and personality , 2011, Knowl. Based Syst..

[8]  William Rand,et al.  Agent-Based Modeling in Marketing: Guidelines for Rigor , 2011 .

[9]  Kevin Lane Keller,et al.  Marketing Management: A South Asian Perspective , 2008 .

[10]  Michael J. North,et al.  Tutorial on agent-based modelling and simulation , 2005, Proceedings of the Winter Simulation Conference, 2005..

[11]  Salvatore T. March,et al.  Design and natural science research on information technology , 1995, Decis. Support Syst..

[12]  The Effect of Requests for Positive Evaluations on Customer Satisfaction Ratings , 2014 .

[13]  S. Yapa,et al.  Customer Retention: With Special Reference to Telecommunication Industry in Sri Lanka , 2013 .

[14]  Euiho Suh,et al.  A model for evaluating the effectiveness of CRM using the balanced scorecard , 2003 .

[15]  Mario Schaarschmidt,et al.  Impediments to customer integration into the innovation process: A case study in the telecommunications industry , 2014 .

[16]  Chi-Hyuck Jun,et al.  Improved churn prediction in telecommunication industry by analyzing a large network , 2014, Expert Syst. Appl..

[17]  Juhee Kang,et al.  International Journal of Hospitality Management Understanding Customer Behavior in Name-brand Korean Coffee Shops: the Role of Self-congruity and Functional Congruity , 2022 .

[18]  Vijay K. Vaishnavi,et al.  Theory Development in Design Science Research: Anatomy of a Research Project , 2008 .

[19]  Sotiris B. Kotsiantis,et al.  Decision trees: a recent overview , 2011, Artificial Intelligence Review.

[20]  A. Keramati,et al.  Churn analysis for an Iranian mobile operator , 2011 .

[21]  Rajendra K. Srivastava,et al.  Customer Acquisition and Retention Spending: An Analytical Model and Empirical Investigation in Wireless Telecommunications Markets , 2016 .

[22]  Limsoon Wong,et al.  DATA MINING TECHNIQUES , 2003 .

[23]  Panagiotis Trivellas,et al.  Investigating the impact of service quality and customer satisfaction on customer loyalty in mobile telephony in Greece , 2010 .

[24]  A. Tiwari,et al.  TECHNOLOGY SELECTION FOR HUMAN BEHAVIOUR MODELLING IN CONTACT CENTRES , 2006 .

[25]  Gunnvald B. Svendsen,et al.  The effect of brand on churn in the telecommunications sector , 2013 .

[26]  Seftya Eka Fahyan Marketing management : analysis, planning, implementation, and control / Philip Kotler , 2007 .

[27]  Michael D. Johnson,et al.  Customer Retention in the Automotive Industry: Quality, Satisfaction and Loyalty , 2012 .

[28]  Bart Baesens,et al.  New insights into churn prediction in the telecommunication sector: A profit driven data mining approach , 2012, Eur. J. Oper. Res..

[29]  Christophe Croux,et al.  Bagging and Boosting Classification Trees to Predict Churn , 2006 .

[30]  Choong C. Lee,et al.  Understanding Consumer Churning Behaviors in Mobile Telecommunication Service Industry : Cross-national Comparison between Korea and China , 2015, ICIS.

[31]  Bart Baesens,et al.  Building comprehensible customer churn prediction models with advanced rule induction techniques , 2011, Expert Syst. Appl..

[32]  Xiaohang Zhang,et al.  Predicting customer churn by integrating the effect of the customer contact network , 2010, Proceedings of 2010 IEEE International Conference on Service Operations and Logistics, and Informatics.

[33]  Michael J. North,et al.  AGENT-BASED MODELING AND SIMULATION: DESKTOP ABMS , 2007 .

[34]  Yossi Richter,et al.  Predicting Customer Churn in Mobile Networks through Analysis of Social Groups , 2010, SDM.

[35]  Bart Baesens,et al.  Social network analysis for customer churn prediction , 2014, Appl. Soft Comput..

[36]  Jan Pries-Heje,et al.  The Design Theory Nexus , 2008, MIS Q..

[37]  Vijay K. Vaishnavi,et al.  Design Science Research Methods and Patterns: Innovating Information and Communication Technology , 2007 .

[38]  C. Ranganathan,et al.  Two-level model of customer retention in the US mobile telecommunications service market , 2008 .

[39]  Susan M. Keaveney,et al.  Customer Switching Behavior in Service Industries: An Exploratory Study , 1995 .

[40]  Mohammad Mehdi Sepehri,et al.  Applying Data Mining to Customer Churn Prediction in an Internet Service Provider , 2010 .

[41]  João Falcão e Cunha,et al.  Modeling partial customer churn: On the value of first product-category purchase sequences , 2012, Expert systems with applications.

[42]  Tao Zhang,et al.  Agent-based simulation of consumer purchase decision-making and the decoy effect , 2007 .

[43]  Tracy Jun-Feng Zhang,et al.  The Roles of Justice and Customer Satisfaction in Customer Retention: A Lesson from Service Recovery , 2013 .

[44]  Martin Bichler,et al.  Design science in information systems research , 2006, Wirtschaftsinf..

[45]  Vadlamani Ravi,et al.  A novel hybrid undersampling method for mining unbalanced datasets in banking and insurance , 2015, Eng. Appl. Artif. Intell..

[46]  Tammo H. A. Bijmolt,et al.  Dynamic Effects of Social Influence and Direct Marketing on the Adoption of High-Technology Products , 2014 .

[47]  D. Jeng,et al.  Assessing customer retention strategies in mobile telecommunications Hybrid MCDM approach , 2012 .

[48]  Boonchai Hongcharu,et al.  Factors that Impact Customer Satisfaction: Evidence from the Thailand Mobile Cellular Network Industry , 2011 .

[49]  Mike Thelwall,et al.  Sentiment in short strength detection informal text , 2010 .

[50]  João Falcão e Cunha,et al.  Customer attrition in retailing: An application of Multivariate Adaptive Regression Splines , 2013, Expert Syst. Appl..

[51]  Marie-Odile Richard,et al.  Modeling online consumer behavior: Preeminence of emotions and moderating influences of need for cognition and optimal stimulation level , 2016 .

[52]  Berkant Barla Cambazoglu,et al.  A large-scale sentiment analysis for Yahoo! answers , 2012, WSDM '12.

[53]  Hyung-Seok Lee Major Moderators Influencing the Relationships of Service Quality, Customer Satisfaction and Customer Loyalty , 2013 .

[54]  Bart Baesens,et al.  A Novel Profit Maximizing Metric for Measuring Classification Performance of Customer Churn Prediction Models , 2013, IEEE Transactions on Knowledge and Data Engineering.

[55]  Jinyu Li,et al.  A Multiclass Machine Learning Approach to Credit Rating Prediction , 2008, 2008 International Symposiums on Information Processing.

[56]  Li Hong,et al.  Predicting Customer Churn in Mobile Telephony Industry Using Probabilistic Classifiers in Data Mining , 2013 .

[57]  Chih-Fong Tsai,et al.  Data Mining Techniques in Customer Churn Prediction , 2010 .

[58]  Paul Twomey,et al.  Agent‐based modelling of customer behaviour in the telecoms and media markets , 2002 .

[59]  Mohd. Ismail Ahmad,et al.  Choice Criteria for Mobile Telecom Operator: Empirical Investigation among Malaysian Customers , 2011 .