A Novel Architecture and Machine Learning Algorithm for the Prediction of User Equipment Replacing
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The prediction of User Equipment replacing is worth of research both for telecom operators and mobile phone companies. This paper designs a machine learning prediction of User Equipment replacing (MLPUser EquipmentC) architecture and a data mining algorithm called CQSFL-LR (Composite-parameter Quantum-inspired Shuffled Frog Leaping Logistic Regression), aiming at researching the factors and their weight respectively of a telecom user whether will replace his cellphone or not. Experiment shows the proposed CQSFL-LR algorithm has better performance in accuracy and precision compared with traditional Logistic Regression, proving the superiority of CQSFL-LR. The experiment also shows MLPUser EquipmentC architecture can predict User Equipment replacing, providing marketing guidance to telecom operators and mobile phone companies.
[1] Ali Maroosi,et al. Application of shuffled frog-leaping algorithm on clustering , 2009 .
[2] Muzaffar Eusuff,et al. Shuffled frog-leaping algorithm: a memetic meta-heuristic for discrete optimization , 2006 .
[3] Li Hong,et al. Predicting Customer Churn in Mobile Telephony Industry Using Probabilistic Classifiers in Data Mining , 2013 .
[4] Lirong Ma,et al. A method for discretization of continuous attributes in network performance measurement , 2014, 2014 IEEE Workshop on Electronics, Computer and Applications.