Forecasting road deaths in Malaysia using support vector machine

An average of 6,350 people died every year in Malaysia due to road traffic accidents. A published data of Malaysian road deaths in 20 years since 1997 reveals that the number of fatalities has not really declined with a difference of less than 10% from one year to the next. Forecasting the number of...

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Main Authors: Nurul Qastalani, Radzuan, Mohd Hasnun, Arif Hassan, Anwar P.P., Abdul Majeed, Rabiu Muazu, Musa, Khairil Anwar, Abu Kassim
Format: Article
Language:English
Published: Springer 2020
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Online Access:http://umpir.ump.edu.my/id/eprint/27603/1/Road%20Death%20SVM_submitted_citation.docm
http://umpir.ump.edu.my/id/eprint/27603/
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Institution: Universiti Malaysia Pahang
Language: English
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spelling my.ump.umpir.276032020-01-31T09:03:16Z http://umpir.ump.edu.my/id/eprint/27603/ Forecasting road deaths in Malaysia using support vector machine Nurul Qastalani, Radzuan Mohd Hasnun, Arif Hassan Anwar P.P., Abdul Majeed Rabiu Muazu, Musa Khairil Anwar, Abu Kassim TD Environmental technology. Sanitary engineering An average of 6,350 people died every year in Malaysia due to road traffic accidents. A published data of Malaysian road deaths in 20 years since 1997 reveals that the number of fatalities has not really declined with a difference of less than 10% from one year to the next. Forecasting the number of fatalities is beneficial in planning a counter measure to bring down the death toll. A predictive model of Malaysian road death has been developed using a time-series model known as auto regressive integrated moving average (ARIMA). The model was used in the previous Road Safety Plan of Malaysia to set a target death toll to be reduced in 2020, albeit being inaccurate. This study proposes a new approach in forecasting the road deaths, by means of a machine learning algorithm known as Support Vector Machine. The length of various types of road, number of registered vehicles and population were among the eight features used to develop the model. Comparison between the actual road deaths and the prediction demonstrates a good agreement, with a mean absolute percentage error of 2% and an R-squared value of 85%. The Linear kernel-based Support Vector Machine was found to be able to predict the road deaths in Malaysia with reasonable accuracy. The developed model could be used by relevant stakeholders in devising appropriate poli-cies and regulations to reduce road fatalities in Malaysia. Springer 2020 Article PeerReviewed pdf en http://umpir.ump.edu.my/id/eprint/27603/1/Road%20Death%20SVM_submitted_citation.docm Nurul Qastalani, Radzuan and Mohd Hasnun, Arif Hassan and Anwar P.P., Abdul Majeed and Rabiu Muazu, Musa and Khairil Anwar, Abu Kassim (2020) Forecasting road deaths in Malaysia using support vector machine. The 5th International Conference on Electrical, Control & Computer Engineering (InECCE 2019). ISSN ISBN:978-981-15-2317-5 (In Press)
institution Universiti Malaysia Pahang
building UMP Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Malaysia Pahang
content_source UMP Institutional Repository
url_provider http://umpir.ump.edu.my/
language English
topic TD Environmental technology. Sanitary engineering
spellingShingle TD Environmental technology. Sanitary engineering
Nurul Qastalani, Radzuan
Mohd Hasnun, Arif Hassan
Anwar P.P., Abdul Majeed
Rabiu Muazu, Musa
Khairil Anwar, Abu Kassim
Forecasting road deaths in Malaysia using support vector machine
description An average of 6,350 people died every year in Malaysia due to road traffic accidents. A published data of Malaysian road deaths in 20 years since 1997 reveals that the number of fatalities has not really declined with a difference of less than 10% from one year to the next. Forecasting the number of fatalities is beneficial in planning a counter measure to bring down the death toll. A predictive model of Malaysian road death has been developed using a time-series model known as auto regressive integrated moving average (ARIMA). The model was used in the previous Road Safety Plan of Malaysia to set a target death toll to be reduced in 2020, albeit being inaccurate. This study proposes a new approach in forecasting the road deaths, by means of a machine learning algorithm known as Support Vector Machine. The length of various types of road, number of registered vehicles and population were among the eight features used to develop the model. Comparison between the actual road deaths and the prediction demonstrates a good agreement, with a mean absolute percentage error of 2% and an R-squared value of 85%. The Linear kernel-based Support Vector Machine was found to be able to predict the road deaths in Malaysia with reasonable accuracy. The developed model could be used by relevant stakeholders in devising appropriate poli-cies and regulations to reduce road fatalities in Malaysia.
format Article
author Nurul Qastalani, Radzuan
Mohd Hasnun, Arif Hassan
Anwar P.P., Abdul Majeed
Rabiu Muazu, Musa
Khairil Anwar, Abu Kassim
author_facet Nurul Qastalani, Radzuan
Mohd Hasnun, Arif Hassan
Anwar P.P., Abdul Majeed
Rabiu Muazu, Musa
Khairil Anwar, Abu Kassim
author_sort Nurul Qastalani, Radzuan
title Forecasting road deaths in Malaysia using support vector machine
title_short Forecasting road deaths in Malaysia using support vector machine
title_full Forecasting road deaths in Malaysia using support vector machine
title_fullStr Forecasting road deaths in Malaysia using support vector machine
title_full_unstemmed Forecasting road deaths in Malaysia using support vector machine
title_sort forecasting road deaths in malaysia using support vector machine
publisher Springer
publishDate 2020
url http://umpir.ump.edu.my/id/eprint/27603/1/Road%20Death%20SVM_submitted_citation.docm
http://umpir.ump.edu.my/id/eprint/27603/
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