Ensembles of probability estimation trees for customer churn prediction

KW De Bock, D Van den Poel - Trends in Applied Intelligent Systems: 23rd …, 2010 - Springer
Trends in Applied Intelligent Systems: 23rd International Conference on …, 2010Springer
Customer churn prediction is one of the most important elements of a company's Customer
Relationship Management (CRM) strategy. In this study, two strategies are investigated to
increase the lift performance of ensemble classification models, ie (i) using probability
estimation trees (PETs) instead of standard decision trees as base classifiers, and (ii)
implementing alternative fusion rules based on lift weights for the combination of ensemble
member's outputs. Experiments are conducted for four popular ensemble strategies on five …
Abstract
Customer churn prediction is one of the most important elements of a company’s Customer Relationship Management (CRM) strategy. In this study, two strategies are investigated to increase the lift performance of ensemble classification models, i.e. (i) using probability estimation trees (PETs) instead of standard decision trees as base classifiers, and (ii) implementing alternative fusion rules based on lift weights for the combination of ensemble member’s outputs. Experiments are conducted for four popular ensemble strategies on five real-life churn data sets. In general, the results demonstrate how lift performance can be substantially improved by using alternative base classifiers and fusion rules. However, the effect varies for the different ensemble strategies. In particular, the results indicate an increase of lift performance of (i) Bagging by implementing C4.4 base classifiers, (ii) the Random Subspace Method (RSM) by using lift-weighted fusion rules, and (iii) AdaBoost by implementing both.
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