We propose an estimator of the conditional tail moment (CTM) when the data are subject to random censorship. The variable of main interest and the censoring variable both follow a Pareto-type distribution. We establish the asymptotic properties of our estimator and discuss bias-reduction. Then, the CTM is used to estimate, in case of censorship, the premium principle for excess-of-loss reinsurance. The finite sample properties of the proposed estimators are investigated with a simulation study and we illustrate their practical applicability on a dataset of motor third party liability insurance
Reversed hazard rate (RHR) function is an important reliability function that is applicable to vario...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
In this paper we study optimal reinsurance models from the per- spective of an insurer by minimizing...
Many insurance premium principles are dened and various estimation procedures introduced in the lite...
We consider bias-reduced estimation of the extreme value index in conditional Pareto-type models wit...
International audienceSeveral risk measures have been proposed in the literature. In this talk, we f...
In this study, we take the conditional tail expectation (CTE) as the constraint condition and consid...
In this paper we propose an asymptotic gaussian reduced bias estimator of the reinsurance premium of...
Parametric statistical models for insurance claims severity are continuous, right-skewed, and freque...
Under a quantile restriction, randomly censored regression models can be written in terms of conditi...
The nonparametric estimator of the conditional survival function proposed by Beran is a useful tool ...
Many authors have studied estimation of the reinsurance premium when sequences are i.i.d. for differ...
International audienceWe propose a regression tree procedure to estimate the conditional distributio...
Several risk measures have been proposed in the literature, among them the marginal mean excess, def...
ACL-3International audienceIn extreme value theory, the extreme-value index is a parameter that cont...
Reversed hazard rate (RHR) function is an important reliability function that is applicable to vario...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
In this paper we study optimal reinsurance models from the per- spective of an insurer by minimizing...
Many insurance premium principles are dened and various estimation procedures introduced in the lite...
We consider bias-reduced estimation of the extreme value index in conditional Pareto-type models wit...
International audienceSeveral risk measures have been proposed in the literature. In this talk, we f...
In this study, we take the conditional tail expectation (CTE) as the constraint condition and consid...
In this paper we propose an asymptotic gaussian reduced bias estimator of the reinsurance premium of...
Parametric statistical models for insurance claims severity are continuous, right-skewed, and freque...
Under a quantile restriction, randomly censored regression models can be written in terms of conditi...
The nonparametric estimator of the conditional survival function proposed by Beran is a useful tool ...
Many authors have studied estimation of the reinsurance premium when sequences are i.i.d. for differ...
International audienceWe propose a regression tree procedure to estimate the conditional distributio...
Several risk measures have been proposed in the literature, among them the marginal mean excess, def...
ACL-3International audienceIn extreme value theory, the extreme-value index is a parameter that cont...
Reversed hazard rate (RHR) function is an important reliability function that is applicable to vario...
In this paper, we study a smooth estimator of the conditional hazard rate function in the censorship...
In this paper we study optimal reinsurance models from the per- spective of an insurer by minimizing...