On Two Mixture-Based Clustering Approaches Used in Modeling an Insurance Portfolio
Abstract
We review two complementary mixture-based clustering approaches for modeling
unobserved heterogeneity in an insurance portfolio: the generalized linear mixed cluster-weighted
model (CWM) and mixture-based clustering for an ordered stereotype model (OSM). The latter is
for modeling of ordinal variables, and the former is for modeling losses as a function of mixed-type
of covariates. The article extends the idea of mixture modeling to a multivariate classification
for the purpose of testing unobserved heterogeneity in an insurance portfolio. The application
of both methods is illustrated on a well-known French automobile portfolio, in which the model
fitting is performed using the expectation-maximization (EM) algorithm. Our findings show that
these mixture-based clustering methods can be used to further test unobserved heterogeneity in
an insurance portfolio and as such may be considered in insurance pricing, underwriting, and risk
management.