道路交通事故综合研究:基于机器学习的热点分析与严重程度预测

Utkarsh Gupta, Varun Mk, G. Srinivasa
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引用次数: 1

摘要

本研究分析了一段时间内记录的道路交通事故数据,以深入了解基础设施和政策中的潜在痛点。这种洞察力使我们能够将精力集中在正确的方向上,使人们的生活更安全。这些数据包括影响这些事故严重程度的各种地理和气象因素。我们使用核密度估计(KDE)图来分析事故易发地区的热点,权衡多年来的严重程度,以了解这些危险区域的演变。此外,我们使用机器学习算法来预测给定某些参数的事故严重程度,并了解对事故严重程度有重大影响的因素。我们研究了英国道路交通事故的公开数据集,作为管道概念的证明,以了解在感兴趣的地区发生的事故的潜在模式。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Comprehensive Study of Road Traffic Accidents: Hotspot Analysis and Severity Prediction Using Machine Learning
This study analyses road traffic accident data recorded over a period of time to gain insights to the underlying pain points in the infrastructure and policies. Such insight allows us to focus our efforts in the right direction to make the lives of people safer. The data includes various geographical and meteorological factors affecting the severity of these accidents. We use Kernel density estimation (KDE) plots to analyse hotspots of accident-prone areas weighed against severity over years to understand the evolution of these dangerous zones. Furthermore, we use machine learning algorithms to predict the accident severity given certain parameters and to understand the factors that have a major influence on the severity of the accident. We have studied a publicly available dataset of road traffic accidents in the UK as a proof of concept of the pipeline to understand the underlying patterns of accidents occurring in a region of interest.
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