L-RBF: A Customer Churn Prediction Model Based on Lasso + RBF

With the development of market economic, customer churn prediction play a critical role in the company management. How-ever, customer information is complex, it contains multi-dimensional features. What's worse, the number of customer churn very small among the whole consumers, and the features of customer are dynamically changing, which is challenging for traditional statistical methods. Fortunately, as the rise of edge computing, more computing related to data-intensive applications will be de-centralized to edge smart terminals. Moreover, edge computing focuses on real-time, short-cycle analysis, which is useful for dealing with dynamic changes problems in customer features. Therefore, to address these issues about customer messages, this paper proposes a simple and effective model to predictive customer churn with a higher accuracy, named L-RBF. The basic idea is to utilize Lasso Regression algorithm (Lasso) for optimizing Radial Basis Function Neural Network (RBF). At first, placing customer features on edge terminals, and Lasso is utilized to extract the correlated features of customer churn. Then, according to the correlated features and lasso regression equation, we can automatically set the topology and parameter information of RBF. Finally, experimental results indicate that L-RBF has a higher recall rate and stronger prediction classification ability compared with the previous work, included Logistic Regression (Log-R), RBF and Boosting.

[1]  Noorbakhsh Amiri Golilarz,et al.  Control chart pattern recognition using RBF neural network with new training algorithm and practical features. , 2018, ISA transactions.

[2]  Pierluigi Siano,et al.  A Novel RBF Training Algorithm for Short-Term Electric Load Forecasting and Comparative Studies , 2015, IEEE Transactions on Industrial Electronics.

[3]  Xiongfei Li,et al.  The use of ROC and AUC in the validation of objective image fusion evaluation metrics , 2015, Signal Process..

[4]  Dongqing Zhang,et al.  Prediction of soybean price in China using QR-RBF neural network model , 2018, Comput. Electron. Agric..

[5]  Bart Baesens,et al.  Benchmarking sampling techniques for imbalance learning in churn prediction , 2018, J. Oper. Res. Soc..

[6]  Guangquan Zhang,et al.  A Customer Churn Prediction Model in Telecom Industry Using Boosting , 2014, IEEE Transactions on Industrial Informatics.

[7]  Madjid Tavana,et al.  An Artificial Neural Network and Bayesian Network model for liquidity risk assessment in banking , 2018, Neurocomputing.

[8]  Trevor Hastie,et al.  Statistical Learning with Sparsity: The Lasso and Generalizations , 2015 .

[9]  Mahadev Satyanarayanan,et al.  Edge Computing , 2017, Computer.

[10]  Xinyu Yang,et al.  A Survey on the Edge Computing for the Internet of Things , 2018, IEEE Access.

[11]  Yu Xing,et al.  A prediction method for the wax deposition rate based on a radial basis function neural network , 2017 .

[12]  Yi Zhang,et al.  Speech bottleneck feature extraction method based on overlapping group lasso sparse deep neural network , 2018, Speech Commun..

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

[14]  Sankaran Mahadevan,et al.  An improved method to construct basic probability assignment based on the confusion matrix for classification problem , 2016, Inf. Sci..

[15]  D. Maheswari,et al.  Churn prediction on huge telecom data using hybrid firefly based classification , 2017 .

[16]  Qiang Yang,et al.  Telco Churn Prediction with Big Data , 2015, SIGMOD Conference.

[17]  Tinghuai Ma,et al.  An efficient and scalable density-based clustering algorithm for datasets with complex structures , 2016, Neurocomputing.

[18]  Mahadev Satyanarayanan,et al.  The Emergence of Edge Computing , 2017, Computer.

[19]  Guo Li,et al.  A Big Data Clustering Algorithm for Mitigating the Risk of Customer Churn , 2016, IEEE Transactions on Industrial Informatics.

[20]  Marcos de Sales Guerra Tsuzuki,et al.  Churn Prediction in Online Games Using Players’ Login Records: A Frequency Analysis Approach , 2015, IEEE Transactions on Computational Intelligence and AI in Games.