Leveraging Positive-Unlabeled Learning for Enhanced Black Spot Accident Identification on Greek Road Networks

Vasileios Sevetlidis, Georgios Pavlidis, S. Mouroutsos, A. Gasteratos
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Abstract

Identifying accidents in road black spots is crucial for improving road safety. Traditional methodologies, although insightful, often struggle with the complexities of imbalanced datasets, while machine learning (ML) techniques have shown promise, our previous work revealed that supervised learning (SL) methods face challenges in effectively distinguishing accidents that occur in black spots from those that do not. This paper introduces a novel approach that leverages positive-unlabeled (PU) learning, a technique we previously applied successfully in the domain of defect detection. The results of this work demonstrate a statistically significant improvement in key performance metrics, including accuracy, precision, recall, F1-score, and AUC, compared to SL methods. This study thus establishes PU learning as a more effective and robust approach for accident classification in black spots, particularly in scenarios with highly imbalanced datasets.
利用正向无标记学习增强希腊道路网络的黑点事故识别能力
识别道路黑点事故对于改善道路安全至关重要。传统方法虽然很有洞察力,但往往难以应对不平衡数据集的复杂性,而机器学习(ML)技术已经显示出前景,但我们之前的工作表明,监督学习(SL)方法在有效区分黑点事故和非黑点事故方面面临挑战。本文介绍了一种利用正向无标记(PU)学习的新方法,这是我们之前在缺陷检测领域成功应用的一种技术。与 SL 方法相比,这项工作的结果表明,在关键性能指标上,包括准确率、精确度、召回率、F1 分数和 AUC,都有统计学意义上的显著提高。因此,这项研究证明了 PU 学习是一种更有效、更稳健的黑点事故分类方法,尤其是在数据集高度不平衡的情况下。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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