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从离散的多变量事故计数数据中估计连续事故风险

Continuous crash risk estimation from discrete, multivariate crash count data

Journal of the Royal Statistical Society. Series C: Applied Statistics · 2025
被引 0
ABS 3

中文导读

该研究开发了一个统计模型,利用离散的多变量事故计数数据估计连续的事故风险面,以美国犹他州I-15公路为例,通过多变量随机森林关联道路特征与风险,帮助识别高风险区域和影响因素,支持安全干预决策。

Abstract

Abstract Crash risk affects every driver in some capacity and quantifying this risk is a key outcome in evaluating transportation safety. This study develops a statistical model for estimating continuous crash risk surfaces from discrete, multivariate crash count data. We focus on Interstate 15 (I-15) in Utah, USA, using aggregated crash counts released by the Utah Department of Transportation (UDOT). We model segment-level crash counts as a realization of an aggregated multivariate point pattern with continuous intensity surfaces; thus enabling continuous spatial risk estimation. We link roadway characteristics to crash risk using multivariate random forests, capturing nonlinear relationships and correlations between crash types. This approach supports the identification of high-risk areas and contributing roadway features, ultimately aiming to support decisions related to targeted safety interventions.

交通安全事故风险估计多变量统计空间分析