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Bibliographic Details
Main Authors: Li, Yechen, Shahane, Shantanu, Vasserman, Shoshana, Osorio, Carolina, Chen, Yi-fan, Kuznetsov, Ivan, White, Kristin, Swiatkowska, Justyna, Arora, Neha, Guo, Feng
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.06327
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author Li, Yechen
Shahane, Shantanu
Vasserman, Shoshana
Osorio, Carolina
Chen, Yi-fan
Kuznetsov, Ivan
White, Kristin
Swiatkowska, Justyna
Arora, Neha
Guo, Feng
author_facet Li, Yechen
Shahane, Shantanu
Vasserman, Shoshana
Osorio, Carolina
Chen, Yi-fan
Kuznetsov, Ivan
White, Kristin
Swiatkowska, Justyna
Arora, Neha
Guo, Feng
contents Identifying high crash risk road segments and accurately predicting crash incidence is fundamental to implementing effective safety countermeasures. While collision data inherently reflects risk, the infrequency and inconsistent reporting of crashes present a major challenge to robust risk prediction models. The proliferation of connected vehicle technology offers a promising avenue to leverage high-density safety metrics for enhanced crash forecasting. A Hard-Braking Event (HBE), interpreted as an evasive maneuver, functions as a potent proxy for elevated driving risk due to its demonstrable correlation with underlying crash causal factors. Crucially, HBE data is significantly more readily available across the entire road network than conventional collision records. This study systematically evaluated the correlation at individual road segment level between police-reported collisions and aggregated and anonymized HBEs identified via the Google Android Auto platform, utilizing datasets from California and Virginia. Empirical evidence revealed that HBEs occur at a rate magnitudes higher than traffic crashes. Employing the state-of-the-practice Negative-Binomial regression models, the analysis established a statistically significant positive correlation between the HBE rate and the crash rate: road segments exhibiting a higher frequency of HBEs were consistently associated with a greater incidence of crashes. This sophisticated model incorporated and controlled for various confounding factors, including road type, speed profile, proximity to ramps, and road segment slope. The HBEs derived from connected vehicle technology thus provide a scalable, high-density safety surrogate metric for network-wide traffic safety assessment, with the potential to optimize safer routing recommendations and inform the strategic deployment of active safety countermeasures.
format Preprint
id arxiv_https___arxiv_org_abs_2601_06327
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle From Lagging to Leading: Validating Hard Braking Events as High-Density Indicators of Segment Crash Risk
Li, Yechen
Shahane, Shantanu
Vasserman, Shoshana
Osorio, Carolina
Chen, Yi-fan
Kuznetsov, Ivan
White, Kristin
Swiatkowska, Justyna
Arora, Neha
Guo, Feng
Other Computer Science
Applications
Identifying high crash risk road segments and accurately predicting crash incidence is fundamental to implementing effective safety countermeasures. While collision data inherently reflects risk, the infrequency and inconsistent reporting of crashes present a major challenge to robust risk prediction models. The proliferation of connected vehicle technology offers a promising avenue to leverage high-density safety metrics for enhanced crash forecasting. A Hard-Braking Event (HBE), interpreted as an evasive maneuver, functions as a potent proxy for elevated driving risk due to its demonstrable correlation with underlying crash causal factors. Crucially, HBE data is significantly more readily available across the entire road network than conventional collision records. This study systematically evaluated the correlation at individual road segment level between police-reported collisions and aggregated and anonymized HBEs identified via the Google Android Auto platform, utilizing datasets from California and Virginia. Empirical evidence revealed that HBEs occur at a rate magnitudes higher than traffic crashes. Employing the state-of-the-practice Negative-Binomial regression models, the analysis established a statistically significant positive correlation between the HBE rate and the crash rate: road segments exhibiting a higher frequency of HBEs were consistently associated with a greater incidence of crashes. This sophisticated model incorporated and controlled for various confounding factors, including road type, speed profile, proximity to ramps, and road segment slope. The HBEs derived from connected vehicle technology thus provide a scalable, high-density safety surrogate metric for network-wide traffic safety assessment, with the potential to optimize safer routing recommendations and inform the strategic deployment of active safety countermeasures.
title From Lagging to Leading: Validating Hard Braking Events as High-Density Indicators of Segment Crash Risk
topic Other Computer Science
Applications
url https://arxiv.org/abs/2601.06327