A Framework in CRM Customer Lifecycle: Identify Downward Trend and Potential Issues Detection

Customer retention is one of the primary goals in the area of customer relationship management. A mass of work exists in which machine learning models or business rules are established to predict churn. However, targeting users at an early stage when they start to show a downward trend is a better strategy. In downward trend prediction, the reasons why customers show a downward trend is of great interest in the industry as it helps the business to understand the pain points that customers suffer and to take early action to prevent them from churning. A commonly used method is to collect feedback from customers by either aggressively reaching out to them or by passively hearing from them. However, it is believed that there are a large number of customers who have unpleasant experiences and never speak out. In the literature, there is limited research work that provides a comprehensive and scientific approach to identify these "silent suffers". In this study, we propose a novel two-part framework: developing the downward prediction process and establishing the methodology to identify the reasons why customers are in the downward trend. In the first prediction part, we focus on predicting the downward trend, which is an earlier stage of the customer lifecycle compared to churn. In the second part, we propose an approach to figuring out the cause (of the downward trend) based on a causal inference method and semi-supervised learning. The proposed approach is capable of identifying potential silent sufferers. We take bad shopping experiences as inputs to develop the framework and validate it via a marketing A/B test in the real world. The test readout demonstrates the effectiveness of the framework by driving 88.5% incremental lift in purchase volume.

[1]  Sang-Gun Lee,et al.  Predicting customer churn in mobile industry using data mining technology , 2017, Ind. Manag. Data Syst..

[2]  Xiao Li,et al.  Learning query intent from regularized click graphs , 2008, SIGIR '08.

[3]  Chih-Ping Wei,et al.  Turning telecommunications call details to churn prediction: a data mining approach , 2002, Expert Syst. Appl..

[4]  Philip S. Yu,et al.  Partially Supervised Classification of Text Documents , 2002, ICML.

[5]  Alois Knoll,et al.  Gradient boosting machines, a tutorial , 2013, Front. Neurorobot..

[6]  J. Friedman Greedy function approximation: A gradient boosting machine. , 2001 .

[7]  Bart Baesens,et al.  Social network analytics for churn prediction in telco: Model building, evaluation and network architecture , 2017, Expert Syst. Appl..

[8]  Kristof Coussement,et al.  Faculteit Economie En Bedrijfskunde Hoveniersberg 24 B-9000 Gent Churn Prediction in Subscription Services: an Application of Support Vector Machines While Comparing Two Parameter-selection Techniques Churn Prediction in Subscription Services: an Application of Support Vector Machines While Comparin , 2022 .

[9]  Eric W. T. Ngai,et al.  Customer churn prediction using improved balanced random forests , 2009, Expert Syst. Appl..

[10]  Injazz J. Chen,et al.  Understanding customer relationship management (CRM): People, process and technology , 2003, Bus. Process. Manag. J..

[11]  Bernhard Schölkopf,et al.  Discovering Causal Signals in Images , 2016, 2017 IEEE Conference on Computer Vision and Pattern Recognition (CVPR).

[12]  N. Kamalraj,et al.  A Survey on Churn Prediction Techniques in Communication Sector , 2013 .

[13]  Xiaojin Zhu,et al.  --1 CONTENTS , 2006 .

[14]  Henry L. Roediger,et al.  Research Methods in Psychology , 1985 .

[15]  Mehmet Sabih Aksoy,et al.  A Survey On Data Mining Techniques In Customer Churn Analysis For Telecom Industry , 2014 .

[16]  Arun Kumar Somani,et al.  Enhanced feature mining and classifier models to predict customer churn for an E-retailer , 2017, 2017 7th International Conference on Cloud Computing, Data Science & Engineering - Confluence.

[17]  Dirk Van den Poel,et al.  Handling class imbalance in customer churn prediction , 2009, Expert Syst. Appl..

[18]  Sha Yuan,et al.  Customer Churn Prediction in the Online New Media Platform: A Case Study on Juzi Entertainment , 2017, 2017 International Conference on Platform Technology and Service (PlatCon).