Bayesian Inference is used to develop a credibility estimator and a method to compute insurance premium risk loadings. Algorithms to apply both methods to Generalized Linear Models (GLMs) are provided. We call our credibility estimator the entropic premium. It is a Bayesian point estimator that uses the relative entropy as the loss function. The risk measures Value-at-Risk (VaR) and Tail-Value-at-Risk (TVaR) are used to determine premium risk loadings. Our method considers the number of insureds and their durations as random variables. A distribution to model the duration of risks is introduced. We call it unifed, it has support on the interval (0,1), it is an exponential dispersion family and it can be use...
We consider the problem of determining health insurance premiums based on past information on size o...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
Generalized linear models (GLMs) are gaining popularity as a statistical analysis method for insuran...
We revisit the classical credibility results of Jewell (1974) and Bühlmann (1967) to obtain credibil...
This thesis is about insurance models and aspects of uncertainty pertaining to such models. The mode...
We propose a Bayesian analysis to develop credibility estimates of the well known Biihlmann-Straub m...
This paper introduces nonparametric Bayesian credibility without imposing stringent parametric assum...
Generalized linear models (GLMs) are gaining popularity as a statistical analysis method for insuran...
This thesis is based on the paper \textit{`Quantile credibility models'} by Georgios Pitselis, which...
This thesis introduces two estimation mechanisms to estimate risk premium; namely, Bayesian premium ...
This article presents a new credibility estimation of the probability distributions of risks under B...
Credibility theory provides important guidelines for insurers in the practice of experience rating. ...
This project works with the risk model developed by [6] and quests modelling, estimating and pricing...
When Bayesian models are implemented for a Bonus-Malus System (BMS), a parametric structure, π0 (λ),...
Generalized linear models (GLM) have multiple applications, in particular they are a popular tool in...
We consider the problem of determining health insurance premiums based on past information on size o...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
Generalized linear models (GLMs) are gaining popularity as a statistical analysis method for insuran...
We revisit the classical credibility results of Jewell (1974) and Bühlmann (1967) to obtain credibil...
This thesis is about insurance models and aspects of uncertainty pertaining to such models. The mode...
We propose a Bayesian analysis to develop credibility estimates of the well known Biihlmann-Straub m...
This paper introduces nonparametric Bayesian credibility without imposing stringent parametric assum...
Generalized linear models (GLMs) are gaining popularity as a statistical analysis method for insuran...
This thesis is based on the paper \textit{`Quantile credibility models'} by Georgios Pitselis, which...
This thesis introduces two estimation mechanisms to estimate risk premium; namely, Bayesian premium ...
This article presents a new credibility estimation of the probability distributions of risks under B...
Credibility theory provides important guidelines for insurers in the practice of experience rating. ...
This project works with the risk model developed by [6] and quests modelling, estimating and pricing...
When Bayesian models are implemented for a Bonus-Malus System (BMS), a parametric structure, π0 (λ),...
Generalized linear models (GLM) have multiple applications, in particular they are a popular tool in...
We consider the problem of determining health insurance premiums based on past information on size o...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
Generalized linear models (GLMs) are gaining popularity as a statistical analysis method for insuran...