Estimating the effect of word of mouth on churn and cross-buying in the mobile phone market with Markov logic networks

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Much has been written about word of mouth and customer behavior. Telephone call detail records provide a novel way to understand the strength of the relationship between individuals. In this paper, we predict using call detail records the impact that the behavior of one customer has on another customer's decisions. We study this in the context of churn (a decision to leave a communication service provider) and cross-buying decisions based on an anonymized data set from a telecommunications provider. Call detail records are represented as a weighted graph and a novel statistical learning technique, Markov logic networks, is used in conjunction with logit models based on lagged neighborhood variables to develop the predictive model. In addition, we propose an approach to propositionalization tailored to predictive modeling with social network data. The results show that information on the churn of network neighbors has a significant positive impact on the predictive accuracy and in particular the sensitivity of churn models. The results provide evidence that word of mouth has a considerable impact on customers' churn decisions and also on the purchase decisions, leading to a 19.5% and 8.4% increase in sensitivity of predictive models.

论文关键词:Data mining,Marketing,Telecommunications,Social network analysis

论文评审过程:Received 3 July 2010, Revised 28 December 2010, Accepted 20 January 2011, Available online 4 February 2011.

论文官网地址:https://doi.org/10.1016/j.dss.2011.01.002