Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data
Background: Factors related to the wellness of taxi drivers are important for identifying high-risk drivers based on human factors. The purpose of this study is to predict high-risk taxi drivers based on a deep learning method by identifying the wellness of a driver, which reflects the personal char...
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doaj-141973f20d4a4277bcda06bf4b0ce7702020-12-19T00:03:31ZengMDPI AGInternational Journal of Environmental Research and Public Health1661-78271660-46012020-12-01179505950510.3390/ijerph17249505Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness DataSeolyoung Lee0Jae Hun Kim1Jiwon Park2Cheol Oh3Gunwoo Lee4Research Institute of Engineering Technology, Hanyang University Erica Campus, Ansan 15588, KoreaResearch Institute of Engineering Technology, Hanyang University Erica Campus, Ansan 15588, KoreaDepartment of Transportation and Logistics Engineering, Hanyang University Erica Campus, Ansan 15588, KoreaDepartment of Transportation and Logistics Engineering, Hanyang University Erica Campus, Ansan 15588, KoreaDepartment of Transportation and Logistics Engineering, Hanyang University Erica Campus, Ansan 15588, KoreaBackground: Factors related to the wellness of taxi drivers are important for identifying high-risk drivers based on human factors. The purpose of this study is to predict high-risk taxi drivers based on a deep learning method by identifying the wellness of a driver, which reflects the personal characteristics of the driver. Methods: In-depth interviews with taxi drivers are conducted to collect wellness data. The priorities of factors affecting the severity of accidents are derived through a random forest model. In addition, based on the derived priority of variables, various combinations of inputs are set as scenarios and optimal artificial neural network models are derived for each scenario. Finally, the model with the best performance for predicting high-risk taxi drivers is selected based on three criteria. Results: A model with variables up to the 16th priority as inputs is selected as the best model; this has a classification accuracy of 86% and an F1-score of 0.77. Conclusions: The wellness-based model for predicting high-risk taxi drivers presented in this study can be used for developing a taxi driver management system. In addition, it is expected to be useful when establishing customized traffic safety improvement measures for commercial vehicle drivers.https://www.mdpi.com/1660-4601/17/24/9505artificial neural networkdeep learningtraffic safetytaxi driver wellnessrandom forest method |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Seolyoung Lee Jae Hun Kim Jiwon Park Cheol Oh Gunwoo Lee |
spellingShingle |
Seolyoung Lee Jae Hun Kim Jiwon Park Cheol Oh Gunwoo Lee Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data International Journal of Environmental Research and Public Health artificial neural network deep learning traffic safety taxi driver wellness random forest method |
author_facet |
Seolyoung Lee Jae Hun Kim Jiwon Park Cheol Oh Gunwoo Lee |
author_sort |
Seolyoung Lee |
title |
Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data |
title_short |
Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data |
title_full |
Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data |
title_fullStr |
Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data |
title_full_unstemmed |
Deep-Learning-Based Prediction of High-Risk Taxi Drivers Using Wellness Data |
title_sort |
deep-learning-based prediction of high-risk taxi drivers using wellness data |
publisher |
MDPI AG |
series |
International Journal of Environmental Research and Public Health |
issn |
1661-7827 1660-4601 |
publishDate |
2020-12-01 |
description |
Background: Factors related to the wellness of taxi drivers are important for identifying high-risk drivers based on human factors. The purpose of this study is to predict high-risk taxi drivers based on a deep learning method by identifying the wellness of a driver, which reflects the personal characteristics of the driver. Methods: In-depth interviews with taxi drivers are conducted to collect wellness data. The priorities of factors affecting the severity of accidents are derived through a random forest model. In addition, based on the derived priority of variables, various combinations of inputs are set as scenarios and optimal artificial neural network models are derived for each scenario. Finally, the model with the best performance for predicting high-risk taxi drivers is selected based on three criteria. Results: A model with variables up to the 16th priority as inputs is selected as the best model; this has a classification accuracy of 86% and an F1-score of 0.77. Conclusions: The wellness-based model for predicting high-risk taxi drivers presented in this study can be used for developing a taxi driver management system. In addition, it is expected to be useful when establishing customized traffic safety improvement measures for commercial vehicle drivers. |
topic |
artificial neural network deep learning traffic safety taxi driver wellness random forest method |
url |
https://www.mdpi.com/1660-4601/17/24/9505 |
work_keys_str_mv |
AT seolyounglee deeplearningbasedpredictionofhighrisktaxidriversusingwellnessdata AT jaehunkim deeplearningbasedpredictionofhighrisktaxidriversusingwellnessdata AT jiwonpark deeplearningbasedpredictionofhighrisktaxidriversusingwellnessdata AT cheoloh deeplearningbasedpredictionofhighrisktaxidriversusingwellnessdata AT gunwoolee deeplearningbasedpredictionofhighrisktaxidriversusingwellnessdata |
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1724378174359339008 |