Pricing using a Generalised Linear Model is the gold standard in the auto insurance industry and rate regulation. Generalised Additive Model applications in insurance pricing are receiving increasing attention from academic researchers and actuarial pricing professionals. The actuarial practice has constantly shown evidence of significantly different premium rates among the different rating territories. In this work, we build predictive models for claim frequency and severity using the synthetic Usage Based Insurance (UBI) dataset variables. First, we conduct territorial clustering based on each location’s claim counts and amounts by grouping those locations into a smaller set, defined as a cluster for rating purposes. After clustering, we ...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
This paper presents and compares different risk classi?cation models for the frequency and severity ...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
The study of actuarial fairness in auto insurance has been an important issue in the decision making...
Clustering methods are briefly reviewed and their applications in insurance rate-making are discusse...
Territory design and analysis using geographical loss cost are a key aspect in auto insurance rate r...
We analyze telematics data from a Belgian portfolio of young drivers who underwrote a pay-as-you-dri...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
This paper uses a method proposed by Boskov & Verrall (1994) for premium rating by postcode area. Th...
Academicians and insurance industry practitioners alike have always tried to come up with a premium ...
Predictive modeling is a key technique in auto insurance rate-making and the decision-making involve...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
Predictive modeling is a key technique in auto insurance rate-making and the decision-making involve...
This paper presents and compares different risk classification models for the frequency and severity...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
This paper presents and compares different risk classi?cation models for the frequency and severity ...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
The study of actuarial fairness in auto insurance has been an important issue in the decision making...
Clustering methods are briefly reviewed and their applications in insurance rate-making are discusse...
Territory design and analysis using geographical loss cost are a key aspect in auto insurance rate r...
We analyze telematics data from a Belgian portfolio of young drivers who underwrote a pay-as-you-dri...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
This paper uses a method proposed by Boskov & Verrall (1994) for premium rating by postcode area. Th...
Academicians and insurance industry practitioners alike have always tried to come up with a premium ...
Predictive modeling is a key technique in auto insurance rate-making and the decision-making involve...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
Predictive modeling is a key technique in auto insurance rate-making and the decision-making involve...
This paper presents and compares different risk classification models for the frequency and severity...
We present a fully data driven strategy to incorporate continuous risk factors and geographical info...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
This paper presents and compares different risk classi?cation models for the frequency and severity ...