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Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana

Vehicle ownership modeling and prediction is a crucial task in the transportation planning processes which, traditionally, uses statistical models in the modeling process. However, with the advancement in computing power of computers and Artificial Intelligence, Machine Learning (ML) algorithms are...

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Autores principales: Abdul Muhsin Zambang, Mohammed, Jiang, Haobin, Wahab, Lukuman
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Public Library of Science 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7886192/
https://www.ncbi.nlm.nih.gov/pubmed/33591977
http://dx.doi.org/10.1371/journal.pone.0246044
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author Abdul Muhsin Zambang, Mohammed
Jiang, Haobin
Wahab, Lukuman
author_facet Abdul Muhsin Zambang, Mohammed
Jiang, Haobin
Wahab, Lukuman
author_sort Abdul Muhsin Zambang, Mohammed
collection PubMed
description Vehicle ownership modeling and prediction is a crucial task in the transportation planning processes which, traditionally, uses statistical models in the modeling process. However, with the advancement in computing power of computers and Artificial Intelligence, Machine Learning (ML) algorithms are becoming an alternative or a complement to the statistical models in modeling the transportation planning processes. Although the application of ML algorithms to the transportation planning processes—like mode choice, and traffic forecasting and demand modeling—have received much attention in research and abound in literature, scanty attention is paid to its application to vehicle ownership modeling especially in the context of small to medium cities in developing countries. Therefore, this study attempts to fill this gap by modeling vehicle ownership in the Greater Tamale Area (GTA), a typically small to medium city in Ghana. Using a cross sectional survey of formal sectors workers, data was collected between June–August 2018. The study applied nine different ML classification algorithms to the dataset using 10-fold cross-validation technique/s and the Cohen-Kappa static/statistic to evaluate the predictive performance of each of the algorithms, and the Permutation Feature Importance to examine the features that contribute significantly to the prediction of vehicle ownership in GTA. The results showed that Linear Support Vector Classification (LinearSVC) classifier performed well in comparison with the other classifiers with regards to the overall predictive ability of the classifiers. In terms of class predictions, K- Nearest Neighbors (KNN) classifier performs well for no-vehicle class whiles Linear Support Vector Classification (LinearSVC) and GaussianNB classifiers performs well for motorcycle ownership. LinearSVC and Logistic Regression classifiers performed well on the car ownership class. Also, the results indicated that travel mode choice, average monthly income, average travel distance to workplace, average monthly expenditure on transport, duration of travel to workplace, occupational rank, age, household size and marital status were significant in predicting vehicle ownership for most of the classifiers. These findings could help policies makers carve out strategies that would reduce vehicle ownership but improve personal mobility.
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spelling pubmed-78861922021-02-23 Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana Abdul Muhsin Zambang, Mohammed Jiang, Haobin Wahab, Lukuman PLoS One Research Article Vehicle ownership modeling and prediction is a crucial task in the transportation planning processes which, traditionally, uses statistical models in the modeling process. However, with the advancement in computing power of computers and Artificial Intelligence, Machine Learning (ML) algorithms are becoming an alternative or a complement to the statistical models in modeling the transportation planning processes. Although the application of ML algorithms to the transportation planning processes—like mode choice, and traffic forecasting and demand modeling—have received much attention in research and abound in literature, scanty attention is paid to its application to vehicle ownership modeling especially in the context of small to medium cities in developing countries. Therefore, this study attempts to fill this gap by modeling vehicle ownership in the Greater Tamale Area (GTA), a typically small to medium city in Ghana. Using a cross sectional survey of formal sectors workers, data was collected between June–August 2018. The study applied nine different ML classification algorithms to the dataset using 10-fold cross-validation technique/s and the Cohen-Kappa static/statistic to evaluate the predictive performance of each of the algorithms, and the Permutation Feature Importance to examine the features that contribute significantly to the prediction of vehicle ownership in GTA. The results showed that Linear Support Vector Classification (LinearSVC) classifier performed well in comparison with the other classifiers with regards to the overall predictive ability of the classifiers. In terms of class predictions, K- Nearest Neighbors (KNN) classifier performs well for no-vehicle class whiles Linear Support Vector Classification (LinearSVC) and GaussianNB classifiers performs well for motorcycle ownership. LinearSVC and Logistic Regression classifiers performed well on the car ownership class. Also, the results indicated that travel mode choice, average monthly income, average travel distance to workplace, average monthly expenditure on transport, duration of travel to workplace, occupational rank, age, household size and marital status were significant in predicting vehicle ownership for most of the classifiers. These findings could help policies makers carve out strategies that would reduce vehicle ownership but improve personal mobility. Public Library of Science 2021-02-16 /pmc/articles/PMC7886192/ /pubmed/33591977 http://dx.doi.org/10.1371/journal.pone.0246044 Text en © 2021 Abdul Muhsin Zambang et al http://creativecommons.org/licenses/by/4.0/ This is an open access article distributed under the terms of the Creative Commons Attribution License (http://creativecommons.org/licenses/by/4.0/) , which permits unrestricted use, distribution, and reproduction in any medium, provided the original author and source are credited.
spellingShingle Research Article
Abdul Muhsin Zambang, Mohammed
Jiang, Haobin
Wahab, Lukuman
Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title_full Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title_fullStr Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title_full_unstemmed Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title_short Modeling vehicle ownership with machine learning techniques in the Greater Tamale Area, Ghana
title_sort modeling vehicle ownership with machine learning techniques in the greater tamale area, ghana
topic Research Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7886192/
https://www.ncbi.nlm.nih.gov/pubmed/33591977
http://dx.doi.org/10.1371/journal.pone.0246044
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