2019
DOI: 10.1177/0361198119839347
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Clustering Approach toward Large Truck Crash Analysis

Abstract: Heterogeneity of crash data masks the underlying crash patterns and perplexes crash analysis. This paper aims to explore an advanced high-dimensional clustering approach to investigate heterogeneity in large datasets. Detailed records of crashes involving large trucks occurring in the state of Florida between 2007 and 2016 were examined to identify truck crash patterns and significant conditions contributing to the patterns. The block clustering method was applied to more than 220,000 crash records with nearly… Show more

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Cited by 29 publications
(19 citation statements)
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“…This number increases by more than 60% for Boston and Washington D.C. which are ranked as the most congested two cities in the United States (“INRIX 2018 Global Traffic Scorecard,” 2018). Researchers have argued that automated driving systems (levels 3-5; SAE International, 2018) have the potential to resolve some of the current transportation challenges and to improve road safety and efficiency (Anderson et al, 2014; Arvin, Kamrani, Khattak, & Rios-Torres, 2018; Bengler, Dietmayer, Maurer, & Winner, 2014; Litman, 2017; Rahimi, Azimi, Asgari, & Jin, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…This number increases by more than 60% for Boston and Washington D.C. which are ranked as the most congested two cities in the United States (“INRIX 2018 Global Traffic Scorecard,” 2018). Researchers have argued that automated driving systems (levels 3-5; SAE International, 2018) have the potential to resolve some of the current transportation challenges and to improve road safety and efficiency (Anderson et al, 2014; Arvin, Kamrani, Khattak, & Rios-Torres, 2018; Bengler, Dietmayer, Maurer, & Winner, 2014; Litman, 2017; Rahimi, Azimi, Asgari, & Jin, 2019).…”
Section: Introductionmentioning
confidence: 99%
“…Clustering methods relax the restrictions imposed by traditional methods and have been applied by numerous studies in the past few years. These methods include support vector machine ( 61 63 ), K-means clustering ( 61 , 64 , 65 ), classification trees ( 37 , 38 , 66 , 67 ), block clustering ( 11 ), and latent class models ( 15 , 68 ).…”
Section: Model Structurementioning
confidence: 99%
“…As in the work by Arunajadai et al [26], the matrix is used for grouping the failure modes using clustering algorithms, such as the K-means. Rahimi et al [30] analyzed a large dataset of truck crash data, based on police reports about the driver, vehicle, crash, and citation information. They address the problem of high-dimensionality spaces, by adopting block clustering to investigate heterogeneity in the crash dataset.…”
Section: Related Workmentioning
confidence: 99%