XGBoost is recognized as an algorithm with exceptional predictive capacity. Models for a binary response indicating the existence of accident claims versus no claims can be used to identify the determinants of traffic accidents. This study compared the relative performances of logistic regression and XGBoost approaches for predicting the existence of accident claims using telematics data. The dataset contained information from an insurance company about the individuals' driving patterns¿including total annual distance driven and percentage of total distance driven in urban areas. Our findings showed that logistic regression is a suitable model given its interpretability and good predictive capacity. XGBoost requires numerous model-tuning pr...
<p>Multivariate logistic regression results for prediction of being a case (i.e., having a driving a...
Most automobile insurance databases contain a large number of policyholders with zero claims. This h...
For predicting accident frequencies, a succession of log-linear models for Poisson data, some of whi...
XGBoost is recognized as an algorithm with exceptional predictive capacity. Models for a binary resp...
We analyze telematics data from a Belgian portfolio of young drivers who underwrote a pay-as-you-dri...
With the prevalence of GPS tracking technologiees, car insurance companies have started to adopt usa...
This study explores factors that effect vehicle accidents, predicts the severity of accidents throug...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
Logistic regression is a predictive model machine learning algorithm that displays the results in a ...
The advent of the Internet of Things enables companies to collect an increasing amount of sensor gen...
For automobile insurance firms, telemetric analysis represents a valuable and growing way to identif...
We show how data collected from a GPS device can be incorporated in motor insurance ratemaking. The ...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
Various approaches and perspectives have been presented in safety analysis during the last decade, b...
With the emergence of telematics car driving data, insurance companies have started to boost classic...
<p>Multivariate logistic regression results for prediction of being a case (i.e., having a driving a...
Most automobile insurance databases contain a large number of policyholders with zero claims. This h...
For predicting accident frequencies, a succession of log-linear models for Poisson data, some of whi...
XGBoost is recognized as an algorithm with exceptional predictive capacity. Models for a binary resp...
We analyze telematics data from a Belgian portfolio of young drivers who underwrote a pay-as-you-dri...
With the prevalence of GPS tracking technologiees, car insurance companies have started to adopt usa...
This study explores factors that effect vehicle accidents, predicts the severity of accidents throug...
A data set from a Belgian telematics product aimed at young drivers is used to identify how car insu...
Logistic regression is a predictive model machine learning algorithm that displays the results in a ...
The advent of the Internet of Things enables companies to collect an increasing amount of sensor gen...
For automobile insurance firms, telemetric analysis represents a valuable and growing way to identif...
We show how data collected from a GPS device can be incorporated in motor insurance ratemaking. The ...
Traffic accidents pose a significant public safety concern, leading to numerous injuries and fatalit...
Various approaches and perspectives have been presented in safety analysis during the last decade, b...
With the emergence of telematics car driving data, insurance companies have started to boost classic...
<p>Multivariate logistic regression results for prediction of being a case (i.e., having a driving a...
Most automobile insurance databases contain a large number of policyholders with zero claims. This h...
For predicting accident frequencies, a succession of log-linear models for Poisson data, some of whi...