Matches in SemOpenAlex for { <https://semopenalex.org/work/W4385240668> ?p ?o ?g. }
Showing items 1 to 92 of
92
with 100 items per page.
- W4385240668 abstract "Causal analysis and classification of injury severity applying non-parametric methods for traffic crashes have received limited attention. This study presents a methodological framework for causal inference, using Granger causality analysis, and injury severity classification of traffic crashes, occurring on urban interstates in the State of Texas in the United States, with different machine learning techniques including decision trees (DT), random forest (RF), extreme gradient boosting (XGBoost), and deep neural network (DNN). The data used in this study were obtained for traffic crashes occurring on all urban interstates across the state of Texas for a period of 6 years between 2014 and 2019. The output of the proposed severity classification approach includes three classes; fatal and severe injury (KA) crashes, non-severe and possible injury (BC) crashes, and property damage only (PDO) crashes. While Granger Causality helped identify the most influential factors affecting crash severity, the learning-based models predicted the severity classes with varying performance. The results of Granger causality analysis identified predictors including speed limit, surface and weather conditions, traffic volume, presence of work zones, workers in work zones, and high occupancy vehicle lanes, among others, as the most important factors affecting crash severity. The prediction performance of the classifiers yielded varying results across the different classes. Specifically, while decision tree and random forest classifiers provided the greatest performance for PDO and BC severities, respectively, for the KA class, the rarest class in the data, the DNN classifier performed superior to all other algorithms, most likely due to its capability of approximating nonlinear models. In terms of the overall performance, the decision tree classifier predicts about 58 percent, 43 percent, and 15 percent correct severity for PDO, BC, and KA crashes, respectively. Similarly, the random forest classifier correctly predicts the severity of PDO, BC, and KA crashes by 55 percent, 46 percent, and 17 percent respectively. Moreover, the XGBoost classifier correctly predicts the severity of PDO, BC, and KA crashes by 56 percent, 45 percent, and 27 percent, respectively. Lastly, for the deep neural net, the classier accurately predicts the severity of PDO, BC, and KA crashes by 54 percent, 33 percent, and 44 percent, respectively. It should be noted that these percentages stated are all for the reduced order models which provided superior predictions compared to the full models. Overall, this study contributes to the limited body of knowledge pertaining to causal analysis and classification prediction of traffic crash injury severity using non-parametric approaches. None" @default.
- W4385240668 created "2023-07-26" @default.
- W4385240668 creator A5016383719 @default.
- W4385240668 creator A5043672526 @default.
- W4385240668 creator A5054732841 @default.
- W4385240668 date "2023-07-25" @default.
- W4385240668 modified "2023-10-04" @default.
- W4385240668 title "Causal Analysis and Classification of Traffic Crash Injury Severity Using Machine Learning Algorithms" @default.
- W4385240668 cites W1512711506 @default.
- W4385240668 cites W1978685211 @default.
- W4385240668 cites W1987193935 @default.
- W4385240668 cites W1989317706 @default.
- W4385240668 cites W1994529751 @default.
- W4385240668 cites W2014488833 @default.
- W4385240668 cites W2025371899 @default.
- W4385240668 cites W2041782669 @default.
- W4385240668 cites W2061855265 @default.
- W4385240668 cites W2066400502 @default.
- W4385240668 cites W2112709449 @default.
- W4385240668 cites W2119460626 @default.
- W4385240668 cites W2148143831 @default.
- W4385240668 cites W2148970256 @default.
- W4385240668 cites W2562005416 @default.
- W4385240668 cites W2586068733 @default.
- W4385240668 cites W2750591756 @default.
- W4385240668 cites W2773456884 @default.
- W4385240668 cites W2783149621 @default.
- W4385240668 cites W2889331935 @default.
- W4385240668 cites W2895185857 @default.
- W4385240668 cites W2897805291 @default.
- W4385240668 cites W2921467240 @default.
- W4385240668 cites W2942533449 @default.
- W4385240668 cites W2945388018 @default.
- W4385240668 cites W2962728526 @default.
- W4385240668 cites W3015133235 @default.
- W4385240668 cites W3021102750 @default.
- W4385240668 cites W3101606248 @default.
- W4385240668 cites W3132899742 @default.
- W4385240668 cites W3136214921 @default.
- W4385240668 cites W3205497540 @default.
- W4385240668 cites W4205867930 @default.
- W4385240668 cites W4213222220 @default.
- W4385240668 cites W4237151788 @default.
- W4385240668 cites W4242027333 @default.
- W4385240668 cites W4285732367 @default.
- W4385240668 doi "https://doi.org/10.1007/s42421-023-00076-9" @default.
- W4385240668 hasPublicationYear "2023" @default.
- W4385240668 type Work @default.
- W4385240668 citedByCount "2" @default.
- W4385240668 countsByYear W43852406682023 @default.
- W4385240668 crossrefType "journal-article" @default.
- W4385240668 hasAuthorship W4385240668A5016383719 @default.
- W4385240668 hasAuthorship W4385240668A5043672526 @default.
- W4385240668 hasAuthorship W4385240668A5054732841 @default.
- W4385240668 hasBestOaLocation W43852406682 @default.
- W4385240668 hasConcept C11413529 @default.
- W4385240668 hasConcept C119857082 @default.
- W4385240668 hasConcept C129824826 @default.
- W4385240668 hasConcept C154945302 @default.
- W4385240668 hasConcept C169258074 @default.
- W4385240668 hasConcept C183469790 @default.
- W4385240668 hasConcept C199360897 @default.
- W4385240668 hasConcept C41008148 @default.
- W4385240668 hasConcept C84525736 @default.
- W4385240668 hasConceptScore W4385240668C11413529 @default.
- W4385240668 hasConceptScore W4385240668C119857082 @default.
- W4385240668 hasConceptScore W4385240668C129824826 @default.
- W4385240668 hasConceptScore W4385240668C154945302 @default.
- W4385240668 hasConceptScore W4385240668C169258074 @default.
- W4385240668 hasConceptScore W4385240668C183469790 @default.
- W4385240668 hasConceptScore W4385240668C199360897 @default.
- W4385240668 hasConceptScore W4385240668C41008148 @default.
- W4385240668 hasConceptScore W4385240668C84525736 @default.
- W4385240668 hasIssue "2" @default.
- W4385240668 hasLocation W43852406681 @default.
- W4385240668 hasLocation W43852406682 @default.
- W4385240668 hasOpenAccess W4385240668 @default.
- W4385240668 hasPrimaryLocation W43852406681 @default.
- W4385240668 hasRelatedWork W3134840015 @default.
- W4385240668 hasRelatedWork W4280583453 @default.
- W4385240668 hasRelatedWork W4283313480 @default.
- W4385240668 hasRelatedWork W4285225238 @default.
- W4385240668 hasRelatedWork W4285407528 @default.
- W4385240668 hasRelatedWork W4308191010 @default.
- W4385240668 hasRelatedWork W4317732970 @default.
- W4385240668 hasRelatedWork W4318350883 @default.
- W4385240668 hasRelatedWork W4321636153 @default.
- W4385240668 hasRelatedWork W4383746529 @default.
- W4385240668 hasVolume "5" @default.
- W4385240668 isParatext "false" @default.
- W4385240668 isRetracted "false" @default.
- W4385240668 workType "article" @default.