Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm
Yes === This paper presents a novel approach for probabilistic clustering, motivated by a real-world problem of modelling driving behaviour. The main aim is to establish clusters of drivers with similar journey behaviour, based on a large sample of historic journeys data. The proposed approach is...
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ndltd-BRADFORD-oai-bradscholars.brad.ac.uk-10454-186942021-12-23T05:01:25Z Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm Kartashev, K. Doikin, A. Campean, I. Felician Uglanov, A. Abdullatif, A. Zhang, Q. Angiolini, E. aiR-FORCE project, funded as Proof of Concept by the Institute of Digital Engineering. MCL algorithm Discrete pdf Divergence Yes This paper presents a novel approach for probabilistic clustering, motivated by a real-world problem of modelling driving behaviour. The main aim is to establish clusters of drivers with similar journey behaviour, based on a large sample of historic journeys data. The proposed approach is to establish similarity between driving behaviours by using the Kullback-Leibler and Jensen-Shannon divergence metrics based on empirical multi-dimensional probability density functions. A graph-clustering algorithm is proposed based on modifications of the Markov Cluster algorithm. The paper provides a complete mathematical formulation, details of the algorithms and their implementation in Python, and case study validation based on real-world data. The full-text of this paper will be released for public view at the end of the publisher embargo on 18 Nov 2023. 2021-12-10T17:27:38Z 2021-12-21T15:00:11Z 2021-12-10T17:27:38Z 2021-12-21T15:00:11Z 2022 2021-10-09 2021-11-18 2023-11-18 2021-12-10T17:27:40Z Book chapter Accepted manuscript Kartashev K, Doikin A, Campean IF et al (2022) Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm. In: Jansen T, Jensen R, Mac Parthalain N et al (Eds) Advances in Computational Intelligence Systems. UKCI 2021. Advances in Intelligent Systems and Computing. Vol 1409: 557-568. Springer, Cham. http://hdl.handle.net/10454/18694 en https://doi.org/10.1007/978-3-030-87094-2_49 Authors' Accepted Manuscript (c) 2022 The Authors. Full-text reproduced with author permission. Springer |
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en |
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MCL algorithm Discrete pdf Divergence |
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MCL algorithm Discrete pdf Divergence Kartashev, K. Doikin, A. Campean, I. Felician Uglanov, A. Abdullatif, A. Zhang, Q. Angiolini, E. Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
description |
Yes === This paper presents a novel approach for probabilistic clustering, motivated
by a real-world problem of modelling driving behaviour. The main aim is
to establish clusters of drivers with similar journey behaviour, based on a large
sample of historic journeys data. The proposed approach is to establish similarity
between driving behaviours by using the Kullback-Leibler and Jensen-Shannon
divergence metrics based on empirical multi-dimensional probability density functions.
A graph-clustering algorithm is proposed based on modifications of the
Markov Cluster algorithm. The paper provides a complete mathematical formulation,
details of the algorithms and their implementation in Python, and case study
validation based on real-world data. === The full-text of this paper will be released for public view at the end of the publisher embargo on 18 Nov 2023. |
author2 |
aiR-FORCE project, funded as Proof of Concept by the Institute of Digital Engineering. |
author_facet |
aiR-FORCE project, funded as Proof of Concept by the Institute of Digital Engineering. Kartashev, K. Doikin, A. Campean, I. Felician Uglanov, A. Abdullatif, A. Zhang, Q. Angiolini, E. |
author |
Kartashev, K. Doikin, A. Campean, I. Felician Uglanov, A. Abdullatif, A. Zhang, Q. Angiolini, E. |
author_sort |
Kartashev, K. |
title |
Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
title_short |
Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
title_full |
Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
title_fullStr |
Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
title_full_unstemmed |
Driver Behaviour Clustering Using Discrete PDFs and Modified Markov Algorithm |
title_sort |
driver behaviour clustering using discrete pdfs and modified markov algorithm |
publisher |
Springer |
publishDate |
2021 |
url |
http://hdl.handle.net/10454/18694 |
work_keys_str_mv |
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