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 tha...
This thesis introduces three variable clustering methods designed in the context of diversified port...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
We review two complementary mixture-based clustering approaches for modeling unobserved heterogeneit...
This thesis studies the applications of Pascal mixture models in three closely related topics in ins...
This thesis studies the applications of Pascal mixture models in three closely related topics in ins...
This dissertation is centered on the modeling of heterogeneous data which is ubiquitous in this digi...
In this paper we apply the mixture model approach and compare it with the classical K-means approach...
Mixture models have been around for over 150 years, and they are found in many branches of statistic...
Many of the methods which deal with the reduction of dimensionality in matrices of data are based on...
One of the key questions in the use of mixture models concerns the choice of the number of component...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Clustering methods are briefly reviewed and their applications in insurance rate-making are discusse...
Existing methods can perform likelihood-based clustering on a multivariate data matrix of ordinal da...
In the present era of “Big Data”, data collection involving massive amount of features with a mix of...
This thesis introduces three variable clustering methods designed in the context of diversified port...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
We review two complementary mixture-based clustering approaches for modeling unobserved heterogeneit...
This thesis studies the applications of Pascal mixture models in three closely related topics in ins...
This thesis studies the applications of Pascal mixture models in three closely related topics in ins...
This dissertation is centered on the modeling of heterogeneous data which is ubiquitous in this digi...
In this paper we apply the mixture model approach and compare it with the classical K-means approach...
Mixture models have been around for over 150 years, and they are found in many branches of statistic...
Many of the methods which deal with the reduction of dimensionality in matrices of data are based on...
One of the key questions in the use of mixture models concerns the choice of the number of component...
Finite mixture models are being increasingly used to model the distributions of a wide variety of ra...
Clustering methods are briefly reviewed and their applications in insurance rate-making are discusse...
Existing methods can perform likelihood-based clustering on a multivariate data matrix of ordinal da...
In the present era of “Big Data”, data collection involving massive amount of features with a mix of...
This thesis introduces three variable clustering methods designed in the context of diversified port...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...
In this dissertation, we propose several methodology in clustering and mixture modeling when the use...