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Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers

Short-term traffic state prediction has become an integral component of an advanced traveler information system (ATIS) in intelligent transportation systems (ITS). Accurate modeling and short-term traffic prediction are quite challenging due to its intricate characteristics, stochastic, and dynamic...

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Autores principales: Zahid, Muhammad, Chen, Yangzhou, Jamal, Arshad, Memon, Muhammad Qasim
Formato: Online Artículo Texto
Lenguaje:English
Publicado: MDPI 2020
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038525/
https://www.ncbi.nlm.nih.gov/pubmed/32012650
http://dx.doi.org/10.3390/s20030685
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author Zahid, Muhammad
Chen, Yangzhou
Jamal, Arshad
Memon, Muhammad Qasim
author_facet Zahid, Muhammad
Chen, Yangzhou
Jamal, Arshad
Memon, Muhammad Qasim
author_sort Zahid, Muhammad
collection PubMed
description Short-term traffic state prediction has become an integral component of an advanced traveler information system (ATIS) in intelligent transportation systems (ITS). Accurate modeling and short-term traffic prediction are quite challenging due to its intricate characteristics, stochastic, and dynamic traffic processes. Existing works in this area follow different modeling approaches that are focused to fit speed, density, or the volume data. However, the accuracy of such modeling approaches has been frequently questioned, thereby traffic state prediction over the short-term from such methods inflicts an overfitting issue. We address this issue to accurately model short-term future traffic state prediction using state-of-the-art models via hyperparameter optimization. To do so, we focused on different machine learning classifiers such as local deep support vector machine (LD-SVM), decision jungles, multi-layers perceptron (MLP), and CN2 rule induction. Moreover, traffic states are evaluated using traffic attributes such as level of service (LOS) horizons and simple if–then rules at different time intervals. Our findings show that hyperparameter optimization via random sweep yielded superior results. The overall prediction performances obtained an average improvement by over 95%, such that the decision jungle and LD-SVM achieved an accuracy of 0.982 and 0.975, respectively. The experimental results show the robustness and superior performances of decision jungles (DJ) over other methods.
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spelling pubmed-70385252020-03-09 Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers Zahid, Muhammad Chen, Yangzhou Jamal, Arshad Memon, Muhammad Qasim Sensors (Basel) Article Short-term traffic state prediction has become an integral component of an advanced traveler information system (ATIS) in intelligent transportation systems (ITS). Accurate modeling and short-term traffic prediction are quite challenging due to its intricate characteristics, stochastic, and dynamic traffic processes. Existing works in this area follow different modeling approaches that are focused to fit speed, density, or the volume data. However, the accuracy of such modeling approaches has been frequently questioned, thereby traffic state prediction over the short-term from such methods inflicts an overfitting issue. We address this issue to accurately model short-term future traffic state prediction using state-of-the-art models via hyperparameter optimization. To do so, we focused on different machine learning classifiers such as local deep support vector machine (LD-SVM), decision jungles, multi-layers perceptron (MLP), and CN2 rule induction. Moreover, traffic states are evaluated using traffic attributes such as level of service (LOS) horizons and simple if–then rules at different time intervals. Our findings show that hyperparameter optimization via random sweep yielded superior results. The overall prediction performances obtained an average improvement by over 95%, such that the decision jungle and LD-SVM achieved an accuracy of 0.982 and 0.975, respectively. The experimental results show the robustness and superior performances of decision jungles (DJ) over other methods. MDPI 2020-01-27 /pmc/articles/PMC7038525/ /pubmed/32012650 http://dx.doi.org/10.3390/s20030685 Text en © 2020 by the authors. Licensee MDPI, Basel, Switzerland. This article is an open access article distributed under the terms and conditions of the Creative Commons Attribution (CC BY) license (http://creativecommons.org/licenses/by/4.0/).
spellingShingle Article
Zahid, Muhammad
Chen, Yangzhou
Jamal, Arshad
Memon, Muhammad Qasim
Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title_full Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title_fullStr Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title_full_unstemmed Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title_short Short Term Traffic State Prediction via Hyperparameter Optimization Based Classifiers
title_sort short term traffic state prediction via hyperparameter optimization based classifiers
topic Article
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC7038525/
https://www.ncbi.nlm.nih.gov/pubmed/32012650
http://dx.doi.org/10.3390/s20030685
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