Bayesian Network of Traffic Accidents in Malaysia
Exploring the cause and effect of hazardous events such as traffic accident is vital to the society. Statistical analyses have been a great help in terms of understanding and making inference on the cause-effect analysis and also predicting the occurrence of the accident in the future. One of the is...
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my.uum.repo.291272023-01-29T03:00:12Z https://repo.uum.edu.my/id/eprint/29127/ Bayesian Network of Traffic Accidents in Malaysia Zamzuri, Zamira Hasanah Shabadin, Akmalia Ishak, Siti Zaharah Q Science (General) Exploring the cause and effect of hazardous events such as traffic accident is vital to the society. Statistical analyses have been a great help in terms of understanding and making inference on the cause-effect analysis and also predicting the occurrence of the accident in the future. One of the issues that could not be handled by the conventional way of statistical modelling is the interrelationships exist between the variables in the data set. With the advent of technology and the wide application of machine learning algorithm, this goal can be achieved through the Bayesian network analysis, in which it is a directed acyclic probabilistic graphical model. By using Hill Climb (HC) and Tabu algorithms, the structure of the data was learnt and their relationship is estimated through the conditional probability based on the Bayes theorem. We found that that weather does impact on the accident occurred through the lighting condition and the traffic system. It is also learnt that fatality accidents have a higher likelihood to occur in head-on, turn over and out of control accidents. The use of Bayesian network allows for the probability queries which is very important estimates needed as we want to know what is the risk that we face given the information that we have in hand. Universiti Utara Malaysia Press 2019 Article PeerReviewed application/pdf en https://repo.uum.edu.my/id/eprint/29127/1/JICT%2018%2004%202019%20473-484.pdf Zamzuri, Zamira Hasanah and Shabadin, Akmalia and Ishak, Siti Zaharah (2019) Bayesian Network of Traffic Accidents in Malaysia. Journal of Information and Communication Technology, 18 (4). pp. 473-484. ISSN 2180-3862 |
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Q Science (General) Zamzuri, Zamira Hasanah Shabadin, Akmalia Ishak, Siti Zaharah Bayesian Network of Traffic Accidents in Malaysia |
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Exploring the cause and effect of hazardous events such as traffic accident is vital to the society. Statistical analyses have been a great help in terms of understanding and making inference on the cause-effect analysis and also predicting the occurrence of the accident in the future. One of the issues that could not be handled by the conventional way of statistical modelling is the interrelationships exist between the variables in the data set. With the advent of technology and the wide application of machine learning algorithm, this goal can be achieved through the Bayesian network analysis, in which it is a directed acyclic probabilistic graphical model. By using Hill Climb (HC) and Tabu algorithms, the structure of the data was learnt and their relationship is estimated through the conditional probability based on the Bayes theorem. We found that that weather does impact on the accident occurred through the lighting condition and the traffic system. It is also learnt that fatality accidents have a higher likelihood to occur in head-on, turn over and out of control accidents. The use of Bayesian network allows for the probability queries which is very important estimates needed as we want to know what is the risk that we face given the information that we have in hand. |
format |
Article |
author |
Zamzuri, Zamira Hasanah Shabadin, Akmalia Ishak, Siti Zaharah |
author_facet |
Zamzuri, Zamira Hasanah Shabadin, Akmalia Ishak, Siti Zaharah |
author_sort |
Zamzuri, Zamira Hasanah |
title |
Bayesian Network of Traffic Accidents in Malaysia |
title_short |
Bayesian Network of Traffic Accidents in Malaysia |
title_full |
Bayesian Network of Traffic Accidents in Malaysia |
title_fullStr |
Bayesian Network of Traffic Accidents in Malaysia |
title_full_unstemmed |
Bayesian Network of Traffic Accidents in Malaysia |
title_sort |
bayesian network of traffic accidents in malaysia |
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Universiti Utara Malaysia Press |
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2019 |
url |
https://repo.uum.edu.my/id/eprint/29127/1/JICT%2018%2004%202019%20473-484.pdf https://repo.uum.edu.my/id/eprint/29127/ |
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