Credibility models with general dependence structure among risks and conditional spatial cross-sectional dependence are studied in this project. Predictors of future losses for a Buhlmann-type credibility model under both types of dependence are derived by minimizing the quadratic loss function, and this is further extended to Buhlmann-Straub and regression credibility model formulations. Non-parametric estimators of structural parameters of various models under a spatial statistics context are also considered especially for the case of equal unconditional means. An example with crop insurance losses is studied to illustrate the use of predictors and estimators proposed in this project. Finally, the performance of the predictors and estimat...
The objective of this study is to evaluate and model the spatial dependence of systemic yield risk. ...
We propose a regression credibility model that extends the one introduced by Hachemeister [Hachemeis...
International audienceThere is a great deal of literature regarding use of non-geographically based ...
Abstract In classical credibility theory, claims are assumed to be independent over risks. However, ...
We derive some decision rules to select best predictive regression models in a credibility context, ...
One of the most important techniques used in general insurance pricing is the credibility ratemaking...
Several credibility models found in published literature have largely been single dimensional in the...
Spatial dependence in stochastic frontier models is usually handled by modelling the frontier functi...
In this paper models for claim frequency and claim size in non-life insurance are con-sidered. Both ...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Central limit theorems are developed for instrumental variables estimates of linear and semiparametr...
We derive some decision rules to select best predictive regression models in a credibility context, ...
A semi-parametric spatial model for spatial dependence is proposed in Poisson regressions to study t...
Spatial models, such as the Besag, York and Mollie (BYM)model, have long been used in epidemiology a...
Prediction patterns are generated using different data sets from a database for landslides hazard in...
The objective of this study is to evaluate and model the spatial dependence of systemic yield risk. ...
We propose a regression credibility model that extends the one introduced by Hachemeister [Hachemeis...
International audienceThere is a great deal of literature regarding use of non-geographically based ...
Abstract In classical credibility theory, claims are assumed to be independent over risks. However, ...
We derive some decision rules to select best predictive regression models in a credibility context, ...
One of the most important techniques used in general insurance pricing is the credibility ratemaking...
Several credibility models found in published literature have largely been single dimensional in the...
Spatial dependence in stochastic frontier models is usually handled by modelling the frontier functi...
In this paper models for claim frequency and claim size in non-life insurance are con-sidered. Both ...
Spatial lag dependence in a regression model is similar to the inclusion of a serially autoregressiv...
Central limit theorems are developed for instrumental variables estimates of linear and semiparametr...
We derive some decision rules to select best predictive regression models in a credibility context, ...
A semi-parametric spatial model for spatial dependence is proposed in Poisson regressions to study t...
Spatial models, such as the Besag, York and Mollie (BYM)model, have long been used in epidemiology a...
Prediction patterns are generated using different data sets from a database for landslides hazard in...
The objective of this study is to evaluate and model the spatial dependence of systemic yield risk. ...
We propose a regression credibility model that extends the one introduced by Hachemeister [Hachemeis...
International audienceThere is a great deal of literature regarding use of non-geographically based ...