We present a fully data driven strategy to incorporate continuous risk factors and geographical information in an insurance tariff. A framework is developed that aligns exibility with the practical requirements of an insurance company, its policyholders and the regulator. Our strategy is illustrated with an example from property and casualty (P&C) insurance, namely a motor insurance case study. We start by fitting generalized additive models (GAMs) to the number of reported claims and their corresponding severity. These models allow for flexible statistical modeling in the presence of different types of risk factors: categorical, continuous and spatial risk factors. The goal is to bin the continuous and spatial risk factors such that categ...
Spatial models, such as the Besag, York and Mollie (BYM) model, have long been used in epidemiology ...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
AbstractActuaries in insurance companies try to design a tariff structure that will fairly distribut...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
Pricing using a Generalised Linear Model is the gold standard in the auto insurance industry and rat...
Accidental damage is a typical component of motor insurance claim. Modeling of this nature generally...
Accidental damage is a typical component of motor insurance claim. Modeling of this nature generally...
The goals of this paper are twofold: we describe common features in data sets from motor vehicle ins...
Tree-based models are supervised learning algorithms broadly described by repeated partitioning of t...
Tree-based models are supervised learning algorithms broadly described by repeated partitioning of t...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
Spatial models, such as the Besag, York and Mollie (BYM)model, have long been used in epidemiology a...
Generalized additive models for location, scale and, shape define a flexible, semi-parametric class ...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
Spatial models, such as the Besag, York and Mollie (BYM) model, have long been used in epidemiology ...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
AbstractActuaries in insurance companies try to design a tariff structure that will fairly distribut...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
Pricing using a Generalised Linear Model is the gold standard in the auto insurance industry and rat...
Accidental damage is a typical component of motor insurance claim. Modeling of this nature generally...
Accidental damage is a typical component of motor insurance claim. Modeling of this nature generally...
The goals of this paper are twofold: we describe common features in data sets from motor vehicle ins...
Tree-based models are supervised learning algorithms broadly described by repeated partitioning of t...
Tree-based models are supervised learning algorithms broadly described by repeated partitioning of t...
As the insurance industry is highly data driven it is no surprise that machine learning (ML) has mad...
Spatial models, such as the Besag, York and Mollie (BYM)model, have long been used in epidemiology a...
Generalized additive models for location, scale and, shape define a flexible, semi-parametric class ...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
Spatial models, such as the Besag, York and Mollie (BYM) model, have long been used in epidemiology ...
Free competition in the insurance markets increases the competitiveness and lowers the premiums. If ...
AbstractActuaries in insurance companies try to design a tariff structure that will fairly distribut...