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A Systematic Methodology to Evaluate Prediction Models for Driving Style Classification

机译:评估驾驶风格分类的预测模型的系统方法

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摘要

Identifying driving styles using classification models with in-vehicle data can provide automated feedback to drivers on their driving behavior, particularly if they are driving safely. Although several classification models have been developed for this purpose, there is no consensus on which classifier performs better at identifying driving styles. Therefore, more research is needed to evaluate classification models by comparing performance metrics. In this paper, a data-driven machine-learning methodology for classifying driving styles is introduced. This methodology is grounded in well-established machine-learning (ML) methods and literature related to driving-styles research. The methodology is illustrated through a study involving data collected from 50 drivers from two different cities in a naturalistic setting. Five features were extracted from the raw data. Fifteen experts were involved in the data labeling to derive the ground truth of the dataset. The dataset fed five different models (Support Vector Machines (SVM), Artificial Neural Networks (ANN), fuzzy logic, k-Nearest Neighbor (kNN), and Random Forests (RF)). These models were evaluated in terms of a set of performance metrics and statistical tests. The experimental results from performance metrics showed that SVM outperformed the other four models, achieving an average accuracy of 0.96, F1-Score of 0.9595, Area Under the Curve (AUC) of 0.9730, and Kappa of 0.9375. In addition, Wilcoxon tests indicated that ANN predicts differently to the other four models. These promising results demonstrate that the proposed methodology may support researchers in making informed decisions about which ML model performs better for driving-styles classification.
机译:使用带有车内数据的分类模型来识别驾驶风格,可以为驾驶员提供有关其驾驶行为的自动反馈,尤其是在他们安全驾驶的情况下。尽管已经为此目的开发了几种分类模型,但是在哪种分类器在识别驾驶风格方面表现更好方面尚无共识。因此,需要更多的研究来通过比较性能指标来评估分类模型。本文介绍了一种数据驱动的机器学习方法,用于对驾驶风格进行分类。该方法基于完善的机器学习(ML)方法和与驾驶风格研究相关的文献。通过一项研究说明了该方法,该研究涉及在自然主义背景下从两个不同城市的50个驾驶员那里收集的数据。从原始数据中提取了五个特征。十五名专家参与了数据标注,以得出数据集的基本事实。该数据集提供了五种不同的模型(支持向量机(SVM),人工神经网络(ANN),模糊逻辑,k最近邻(kNN)和随机森林(RF))。这些模型是根据一组性能指标和统计测试进行评估的。性能指标的实验结果表明,SVM优于其他四个模型,平均准确度为0.96,F1-分数为0.9595,曲线下面积(AUC)为0.9730,Kappa为0.9375。此外,Wilcoxon测试表明ANN的预测与其他四个模型不同。这些有希望的结果表明,所提出的方法学可以支持研究人员做出明智的决策,从而确定哪种ML模型更适合驾驶风格分类。

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