[HTML][HTML] Advances, challenges, and future research needs in machine learning-based crash prediction models: A systematic review

Y Ali, F Hussain, MM Haque - Accident Analysis & Prevention, 2024 - Elsevier
Accurately modelling crashes, and predicting crash occurrence and associated severities
are a prerequisite for devising countermeasures and develo** effective road safety …

A literature review of machine learning algorithms for crash injury severity prediction

K Santos, JP Dias, C Amado - Journal of safety research, 2022 - Elsevier
Introduction: Road traffic crashes represent a major public health concern, so it is of
significant importance to understand the factors associated with the increase of injury …

Modeling traffic conflicts for use in road safety analysis: A review of analytic methods and future directions

L Zheng, T Sayed, F Mannering - Analytic methods in accident research, 2021 - Elsevier
Limitations of crash data and crash-based methods have given rise to the study of alternate
measures of safety that are not predicated on the occurrence of a crash such as traffic …

Big data, traditional data and the tradeoffs between prediction and causality in highway-safety analysis

F Mannering, CR Bhat, V Shankar… - Analytic methods in …, 2020 - Elsevier
The analysis of highway accident data is largely dominated by traditional statistical methods
(standard regression-based approaches), advanced statistical methods (such as models …

A systematic review of traffic conflict-based safety measures with a focus on application context

A Arun, MM Haque, S Washington, T Sayed… - Analytic methods in …, 2021 - Elsevier
Relative to safety assessment using data from observed crashes, conflict-based road safety
assessment can potentially provide additional insights into crash causation processes …

Unobserved heterogeneity and the statistical analysis of highway accident data

FL Mannering, V Shankar, CR Bhat - Analytic methods in accident research, 2016 - Elsevier
Highway accidents are complex events that involve a variety of human responses to external
stimuli, as well as complex interactions between the vehicle, roadway features/condition …

Temporal instability and the analysis of highway accident data

F Mannering - Analytic methods in accident research, 2018 - Elsevier
Virtually every statistical analysis of highway safety data is predicated on the assumption
that the estimated model parameters are temporally stable. That is, the assumption that the …

A note on out-of-sample prediction, marginal effects computations, and temporal testing with random parameters crash-injury severity models

Q Hou, X Huo, J Leng, F Mannering - Analytic methods in accident …, 2022 - Elsevier
Random parameters logit models have become an increasingly popular method to
investigate crash-injury severities in recent years. However, there remain potential elements …

Comparison of four statistical and machine learning methods for crash severity prediction

A Iranitalab, A Khattak - Accident Analysis & Prevention, 2017 - Elsevier
Crash severity prediction models enable different agencies to predict the severity of a
reported crash with unknown severity or the severity of crashes that may be expected to …

[HTML][HTML] A spatial autocorrelation analysis of road traffic crash by severity using Moran's I spatial statistics: A comparative study of Addis Ababa and Berlin cities

WT Gedamu, U Plank-Wiedenbeck… - Accident Analysis & …, 2024 - Elsevier
Methodological advancements in road safety research reveal an increasing inclination
toward integrating spatial approaches in hot spot identification, spatial pattern analysis, and …