Insurance is built on the principle that a group of people contributes to a common pool of money which will be used to cover the costs for individuals who suffer from the insured event. In a competitive market, an insurance company will only be profitable if their pricing reflects the covered risks as good as possible. This thesis investigates the recently proposed Combined Actuarial Neural Network (CANN), a model nesting the traditional Generalised Linear Model (GLM) used in insurance pricing into a Neural Network (NN). The main idea of utilising NNs for insurance pricing is to model interactions between features that the GLM is unable to capture. The CANN model is analysed in a commercial insurance setting with respect to two research que...
Pricing an insurance product covering motor third-party liability is a major challenge for actuaries...
The present work studies applicability of artificial neural networks in the assessment of insurance ...
The quality of generalized linear models (GLMs), frequently used by insurance companies, depends on ...
Insurance is built on the principle that a group of people contributes to a common pool of money whi...
Over the last few years the interest in statistical learning methods, in particular artificial neura...
This bachelor thesis describes machine learning techiques, neural networks in particular and their a...
Pricing models for car insurance traditionally use variables related to the policyholder and the ins...
In this project, the problem concerns predicting insurance premiums and particularly vehicle insuran...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
One of the most fundamental requirements in todays insurance sector is the determination of fair pre...
This work presents a set of neural network applications to health insurance pricing. In recent years...
Most non-life insurers and many creditors use regressions, more specifically Generalized Linear Mode...
We recently conducted a research project for a large North American automobile in-surer. This study ...
To date, in the insurance industry, the premium for a given risk is based on the expected claim amou...
We developed a methodology for the neural network boosting of logistic regression aimed at learning ...
Pricing an insurance product covering motor third-party liability is a major challenge for actuaries...
The present work studies applicability of artificial neural networks in the assessment of insurance ...
The quality of generalized linear models (GLMs), frequently used by insurance companies, depends on ...
Insurance is built on the principle that a group of people contributes to a common pool of money whi...
Over the last few years the interest in statistical learning methods, in particular artificial neura...
This bachelor thesis describes machine learning techiques, neural networks in particular and their a...
Pricing models for car insurance traditionally use variables related to the policyholder and the ins...
In this project, the problem concerns predicting insurance premiums and particularly vehicle insuran...
In insurance rate-making, the use of statistical machine learning techniques such as artificial neur...
One of the most fundamental requirements in todays insurance sector is the determination of fair pre...
This work presents a set of neural network applications to health insurance pricing. In recent years...
Most non-life insurers and many creditors use regressions, more specifically Generalized Linear Mode...
We recently conducted a research project for a large North American automobile in-surer. This study ...
To date, in the insurance industry, the premium for a given risk is based on the expected claim amou...
We developed a methodology for the neural network boosting of logistic regression aimed at learning ...
Pricing an insurance product covering motor third-party liability is a major challenge for actuaries...
The present work studies applicability of artificial neural networks in the assessment of insurance ...
The quality of generalized linear models (GLMs), frequently used by insurance companies, depends on ...