A predictive model for recurrent consumption behavior: An application on phone calls

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Nowadays, companies use different datamining and prediction technologies in order to better forecast demands, consumers interests and business requirements. Anticipating the future helps businesses being proactive, managing resources and making intelligent decisions and investments.In this article, we propose a prediction model for recurrent consumption behaviors based on inhomogeneous Poisson processes aiming at predicting users’ future incoming and outgoing phone calls. The proposed model is lightweight in terms of processing power and storage requirement, capable of detecting users’ recurrent phone calls and self-adapting to their changing behaviors and trends. The calls prediction model was implemented as a mobile application and evaluated in real world conditions. During 12 months, different configurations of our model were evaluated on a set of 7645 phone users in order to better tune it and measure its predictions quality.

论文关键词:Consumer behavior,Statistical modeling,Phone calls prediction,Inhomogeneous poisson processes,Exponential moving average

论文评审过程:Received 3 April 2013, Revised 12 March 2014, Accepted 22 March 2014, Available online 12 April 2014.

论文官网地址:https://doi.org/10.1016/j.knosys.2014.03.018