YU Rui-yun, XUE Lin, AN Xuan-miao, XIA Xing-you. Mobile Communications Customer Churn Prediction Algorithm Based on Improved GA-BP Network[J]. Journal of Northeastern University Natural Science, 2019, 40(2): 180-185.
[1]Luo C,Zeng J,Yuan M,et al.Telco user activity level prediction with massive mobile broadband data[J].ACM Transactions on Intelligent Systems & Technology,2016,7(4):1-30. [2]Coussement K,Lessmann S,Verstraeten G.A comparative analysis of data preparation algorithms for customer churn prediction:a case study in the telecommunication industry[J].Decision Support Systems,2017,95:27-36. [3]Keramati A,Jafari-Marandi R,Aliannejadi M,et al.Improved churn prediction in telecommunication industry using data mining techniques[J].Applied Soft Computing,2014,24:994-1012. [4]Kim K,Jun C H,Lee J.Improved churn prediction in telecommunication industry by analyzing a large network[J].Expert Systems with Applications,2014,41(15):6575-6584. [5]Vafeiadis T,Diamantaras K I,Sarigiannidis G,et al.A comparison of machine learning techniques for customer churn prediction[J].Simulation Modelling Practice and Theory,2015,55:1-9. [6]Lu N,Lin H,Lu J,et al.A customer churn prediction model in telecom industry using boosting[J].IEEE Transactions on Industrial Informatics,2014,10(2):1659-1665. [7]Kisioglu P,Topcu Y I.Applying Bayesian belief network approach to customer churn analysis:a case study on the telecom industry of Turkey[J]. Expert Systems with Applications,2011,38(6):7151-7157. [8]García S,Fernández A,Herrera F.Enhancing the effectiveness and interpretability of decision tree and rule induction classifiers with evolutionary training set selection over imbalanced problems[J].Applied Soft Computing,2009,9(4):1304-1314. [9]Farquad M A H,Ravi V,Raju S B.Churn prediction using comprehensible support vector machine:an analytical CRM application[J]. Applied Soft Computing,2014,19:31-40. [10]Pendharkar P C.Genetic algorithm based neural network approaches for predicting churn in cellular wireless network services[J].Expert Systems with Applications,2009,36(3):6714-6720. [11]Subramanian K,Suresh S.A meta-cognitive sequential learning algorithm for neuro-fuzzy inference system[J].Applied Soft Computing,2012,12(11):3603-3614. [12]Oreski S,Oreski G.Genetic algorithm-based heuristic for feature selection in credit risk assessment[J].Expert Systems with Applications,2014,41(4):2052-2064.