We introduce a class of Bayesian infinite mixture models first introduced by Lo (1984) to determine the credibility premium for a non-homogeneous insurance portfolio. The Bayesian infinite mixture models provide us with much flexibility in the specification of the claim distribution. We employ the sampling scheme based on a weighted Chinese restaurant process introduced in Lo et al. (1996) to estimate a Bayesian infinite mixture model from the claim data. The Bayesian sampling scheme also provides a systematic way to cluster the claim data. This can provide some insights into the risk characteristics of the policyholders. The estimated credibility premium from the Bayesian infinite mixture model can be written as a linear combination of the...
When Bayesian models are implemented for a Bonus-Malus System (BMS), a parametric structure, π0 (λ),...
The distribution of the aggregate claim size is the considerable importance in insurance theory sinc...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
We introduce a class of Bayesian infinite mixture models first introduced by Lo (1984) to determine ...
This paper introduces nonparametric Bayesian credibility without imposing stringent parametric assum...
This thesis is about insurance models and aspects of uncertainty pertaining to such models. The mode...
In the minds of most statisticians there are (at least) two mutually exclusive approaches to data an...
This article presents a new credibility estimation of the probability distributions of risks under B...
While both zero-inflation and the unobserved heterogeneity in risks are prevalent issues in modeling...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
Credibility theory provides important guidelines for insurers in the practice of experience rating. ...
Abstract. In casualty insurance, actuaries usually resort to random effects to take unexplained hete...
An infinite mixture of autoregressive models is developed. The unknown parameters in the mixture aut...
We propose a Bayesian analysis to develop credibility estimates of the well known Biihlmann-Straub m...
Models frequently used for car insurance portfolios assume that the distribution of the expcted numb...
When Bayesian models are implemented for a Bonus-Malus System (BMS), a parametric structure, π0 (λ),...
The distribution of the aggregate claim size is the considerable importance in insurance theory sinc...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...
We introduce a class of Bayesian infinite mixture models first introduced by Lo (1984) to determine ...
This paper introduces nonparametric Bayesian credibility without imposing stringent parametric assum...
This thesis is about insurance models and aspects of uncertainty pertaining to such models. The mode...
In the minds of most statisticians there are (at least) two mutually exclusive approaches to data an...
This article presents a new credibility estimation of the probability distributions of risks under B...
While both zero-inflation and the unobserved heterogeneity in risks are prevalent issues in modeling...
This paper introduces the class of Bayesian infinite mixture time series models first proposed in La...
Credibility theory provides important guidelines for insurers in the practice of experience rating. ...
Abstract. In casualty insurance, actuaries usually resort to random effects to take unexplained hete...
An infinite mixture of autoregressive models is developed. The unknown parameters in the mixture aut...
We propose a Bayesian analysis to develop credibility estimates of the well known Biihlmann-Straub m...
Models frequently used for car insurance portfolios assume that the distribution of the expcted numb...
When Bayesian models are implemented for a Bonus-Malus System (BMS), a parametric structure, π0 (λ),...
The distribution of the aggregate claim size is the considerable importance in insurance theory sinc...
Abstract only:\ud \ud Today’s data analysts and modellers are in the luxurious position of being abl...