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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Main Authors: Kartashev, K., Doikin, A., Campean, I. Felician, Uglanov, A., Abdullatif, A., Zhang, Q., Angiolini, E.
Other Authors: aiR-FORCE project, funded as Proof of Concept by the Institute of Digital Engineering.
Language:en
Published: Springer 2021
Subjects:
Online Access:http://hdl.handle.net/10454/18694
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spelling 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
collection NDLTD
language en
sources NDLTD
topic MCL algorithm
Discrete pdf
Divergence
spellingShingle 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
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AT campeanifelician driverbehaviourclusteringusingdiscretepdfsandmodifiedmarkovalgorithm
AT uglanova driverbehaviourclusteringusingdiscretepdfsandmodifiedmarkovalgorithm
AT abdullatifa driverbehaviourclusteringusingdiscretepdfsandmodifiedmarkovalgorithm
AT zhangq driverbehaviourclusteringusingdiscretepdfsandmodifiedmarkovalgorithm
AT angiolinie driverbehaviourclusteringusingdiscretepdfsandmodifiedmarkovalgorithm
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