scholarly journals Algorithmic Audit of Italian Car Insurance: Evidence of Unfairness in Access and Pricing

Author(s):  
Alessandro Fabris ◽  
Alan Mishler ◽  
Stefano Gottardi ◽  
Mattia Carletti ◽  
Matteo Daicampi ◽  
...  
Keyword(s):  
Risks ◽  
2021 ◽  
Vol 9 (3) ◽  
pp. 53
Author(s):  
Yves Staudt ◽  
Joël Wagner

For calculating non-life insurance premiums, actuaries traditionally rely on separate severity and frequency models using covariates to explain the claims loss exposure. In this paper, we focus on the claim severity. First, we build two reference models, a generalized linear model and a generalized additive model, relying on a log-normal distribution of the severity and including the most significant factors. Thereby, we relate the continuous variables to the response in a nonlinear way. In the second step, we tune two random forest models, one for the claim severity and one for the log-transformed claim severity, where the latter requires a transformation of the predicted results. We compare the prediction performance of the different models using the relative error, the root mean squared error and the goodness-of-lift statistics in combination with goodness-of-fit statistics. In our application, we rely on a dataset of a Swiss collision insurance portfolio covering the loss exposure of the period from 2011 to 2015, and including observations from 81 309 settled claims with a total amount of CHF 184 mio. In the analysis, we use the data from 2011 to 2014 for training and from 2015 for testing. Our results indicate that the use of a log-normal transformation of the severity is not leading to performance gains with random forests. However, random forests with a log-normal transformation are the favorite choice for explaining right-skewed claims. Finally, when considering all indicators, we conclude that the generalized additive model has the best overall performance.


2014 ◽  
Vol 5 (3) ◽  
pp. 11-28
Author(s):  
Ljiljana Kašćelan ◽  
Vladimir Kašćelan ◽  
Milijana Novović-Burić

This paper has proposed a data mining approach for risk assessment in car insurance. Standard methods imply classification of policies to great number of tariff classes and assessment of risk on basis of them. With application of data mining techniques, it is possible to get functional dependencies between the level of risk and risk factors as well as better results in predictions. On the case study data it has been proved that data mining techniques can, with better accuracy than the standard methods, predict claim sizes and occurrence of claims, and this represents the basis for calculation of net risk premium and risk classification. This paper, also, discusses advantages of data mining methods compared to standard methods for risk assessment in car insurance, as well as the specificities of the obtained results due to small insurance market, such is the one in Montenegro.


2018 ◽  
Vol 23 (9) ◽  
pp. 2863-2875 ◽  
Author(s):  
Maria Francesca Carfora ◽  
Fabio Martinelli ◽  
Francesco Mercaldo ◽  
Vittoria Nardone ◽  
Albina Orlando ◽  
...  

Author(s):  
Lester R. Reekers

Disputes resulting from low-velocity vehicular collisions have increased dramatically in number during the recent decade. According to the California State Insurance Department, staged auto accidents have risen at an average annual rate of 38% since 1986. Hard figures are not available, but most experts say 10% to 15% of all claim dollars paid out on car insurance result from some form of fakery. According to the Insurance Information Institute, that works out to between $5.4 billion and $8.1 billion of the $54 billion in claims paid last year. An Insurance Research Council study shows that in 1989 insurers paid 55.7 injury claims in California for every 100 auto property damage claims, and 57% of those making bodily injury claims were represented by an attorney. Litigators frequently utilize the assistance of the forensic engineering expert to resolve the legal issues involved in these disputes. Available reference materials for the analysis may be minimal, consisting only of c


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