A Copula-Based family of Bivariate Composite Models for Claim Severity Modelling

10/11/2022
by   Girish Aradhye, et al.
0

In this paper, we consider bivariate composite models for modeling jointly different types of claims and their associated costs in a flexible manner. For expository purposes, the Gumbel copula is paired with the composite Weibull-Inverse Weibull, Paralogistic-Inverse Weibull, and Inverse Burr-Inverse Weibull marginal models. The resulting bivariate copula-based composite models are fitted on motor insurance bodily injury and property damage data from a European motor insurance company and their parameters are estimated via the inference functions for margins method.

READ FULL TEXT
research
08/14/2021

Analyzing insurance data with an exponentiated composite Inverse-Gamma Pareto model

Exponentiated models have been widely used in modeling various types of ...
research
03/12/2021

Mixture composite regression models with multi-type feature selection

The aim of this paper is to present a mixture composite regression model...
research
10/10/2017

Motor Insurance Accidental Damage Claims Modeling with Factor Collapsing and Bayesian Model Averaging

Accidental damage is a typical component of motor insurance claim. Model...
research
08/02/2022

Composite Lognormal-T regression models with varying threshold and its insurance application

Composite probability models have shown very promising results for model...
research
05/28/2018

One family, six distributions -- A flexible model for insurance claim severity

We propose a new class of claim severity distributions with six paramete...
research
04/02/2022

A Generalized Family of Exponentiated Composite Distributions

In this paper, we propose a new class of distributions by exponentiating...
research
12/07/2019

Minimal Sufficient Conditions for Structural Observability/Controllability of Composite Networks via Kronecker Product

In this paper, we consider composite networks formed from the Kronecker ...

Please sign up or login with your details

Forgot password? Click here to reset