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A survey of personalized treatment models for pricing strategies in insurance
Institution:1. Sabanci University, Faculty of Management, YBF 1076 Orhanlı, 34956 Tuzla, İstanbul, Turkey;2. D''Amore-McKim School of Business, Northeastern University, 205E Hayden Hall, 360 Huntington Avenue, Boston, MA 02118, USA;3. North Carolina State University, Dept. of Business Management, Campus Box 7229, Raleigh, NC 27695, USA
Abstract:We consider a model for price calculations based on three components: a fair premium; price loadings reflecting general expenses and solvency requirements; and profit. The first two components are typically evaluated on a yearly basis, while the third is viewed from a longer perspective. When considering the value of customers over a period of several years, and examining policy renewals and cross-selling in relation to price adjustments, many insurers may prefer to reduce their short-term benefits so as to focus on their most profitable customers and the long-term value. We show how models of personalized treatment learning can be used to select the policy holders that should be targeted in a company’s marketing strategies. An empirical application of the causal conditional inference tree method illustrates how best to implement a personalized cross-sell marketing campaign in this framework.
Keywords:Rate making  Cross-selling in insurance  Predictive models  Causal inference  Nonlife insurance
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