The derivation of loss distribution from insurance data is a very interesting research topic but at the same time not an easy task. To find an analytic solution to the loss distribution may be mislading although this approach is frequently adopted in the actuarial literature. Moreover, it is well recognized that the loss distribution is strongly skewed with heavy tails and present small, medium and large size claims which hardly can be fitted by a single analytic and parametric distribution. Here we propose a finite mixture of Skew Normal distributions that provides a better characterization of insurance data. We adopt a Bayesian approach to estimate the model, providing the likelihood and the priors for the all unknow parameters; we impl...
Modeling data on claim sizes is crucial when pricing insurance products. Such loss models require on...
Since returns of financial assets generally exhibit skewness and kurtosis, modelling returns using a...
We consider the problem of determining health insurance premiums based on past information on size o...
The derivation of loss distribution from insurance data is a very interesting research topic but at ...
The derivation of loss distribution from insurance data is a very interesting research topic but at ...
Insurance risks data typically exhibit skewed behaviour. In this paper, we propose a Bayesian approa...
The normal distribution comes as a first choice when fitting real data, but it may not be suitable i...
Mixture models are useful in describing a wide variety of random phenomena because of their flexibil...
In insurance loss reserving, a large portion of zeros are expected at the later development periods ...
Abstract: Normal mixture models provide the most popular framework for mod-elling heterogeneity in a...
In actuary, the derivation of loss distributions from insurance data is of great interest. Fitting a...
This paper is intended as a guide to statistical inference for loss distributions. There are three b...
Finite mixtures of Skew distributions have become increasingly popular in the last few years as a fl...
This paper describes a Bayesian approach to make inference for aggregate loss models in the insuranc...
This paper describes a Bayesian approach to make inference for risk reserve processes with unknown c...
Modeling data on claim sizes is crucial when pricing insurance products. Such loss models require on...
Since returns of financial assets generally exhibit skewness and kurtosis, modelling returns using a...
We consider the problem of determining health insurance premiums based on past information on size o...
The derivation of loss distribution from insurance data is a very interesting research topic but at ...
The derivation of loss distribution from insurance data is a very interesting research topic but at ...
Insurance risks data typically exhibit skewed behaviour. In this paper, we propose a Bayesian approa...
The normal distribution comes as a first choice when fitting real data, but it may not be suitable i...
Mixture models are useful in describing a wide variety of random phenomena because of their flexibil...
In insurance loss reserving, a large portion of zeros are expected at the later development periods ...
Abstract: Normal mixture models provide the most popular framework for mod-elling heterogeneity in a...
In actuary, the derivation of loss distributions from insurance data is of great interest. Fitting a...
This paper is intended as a guide to statistical inference for loss distributions. There are three b...
Finite mixtures of Skew distributions have become increasingly popular in the last few years as a fl...
This paper describes a Bayesian approach to make inference for aggregate loss models in the insuranc...
This paper describes a Bayesian approach to make inference for risk reserve processes with unknown c...
Modeling data on claim sizes is crucial when pricing insurance products. Such loss models require on...
Since returns of financial assets generally exhibit skewness and kurtosis, modelling returns using a...
We consider the problem of determining health insurance premiums based on past information on size o...