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Predicting Motor Insurance Claims Using Telematics Data—XGBoost versus Logistic Regression

机译:使用远程信息处理数据预测汽车保险索赔-XGBoost与Logistic回归

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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 procedures to match the predictive performance of the logistic regression model and greater effort as regards to interpretation.
机译:XGBoost被认为是具有出色预测能力的算法。用于指示交通事故存在与否的二进制响应模型可以用来识别交通事故的决定因素。这项研究比较了Logistic回归和XGBoost方法使用远程信息处理数据预测事故索赔存在的相对性能。该数据集包含来自保险公司的有关个人驾驶模式的信息,包括每年行驶的总距离和市区行驶的总距离的百分比。我们的发现表明,逻辑回归具有可解释性和良好的预测能力,因此是一个合适的模型。 XGBoost需要大量的模型调整程序来匹配逻辑回归模型的预测性能,并在解释方面付出更大的努力。

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