Title | Comparative analysis of clustering-based remaining-time predictive process monitoring approaches |
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Type | Journal article |
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Authors | Ogunbiyi, O., Basukoski, A. and Chaussalet, T.J. |
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Abstract | Predictive process monitoring aims to accurately predict a variable of interest (e.g. remaining time) or the future state of the process instance (e.g. outcome or next step). Various studies have been explored to develop models with greater predictive power. However, comparing the various studies is difficult as different datasets, parameters and evaluation measures have been used. This paper seeks to address this problem with a focus on studies that adopt a clustering-based approach to predict the remaining time to the end of the process instance. A systematic literature review is undertaken to identify existing studies that adopt a clustering-based remaining-time predictive process monitoring approach and performs a comparative analysis to compare and benchmark the output of the identified studies using five real-life event logs. |
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Keywords | operational business process management |
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| process monitoring |
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| remaining-time predictive modelling |
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Journal | International Journal of Business Process Integration and Management |
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Journal citation | 10 (3/4), pp. 230-241 |
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ISSN | 1741-8763 |
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Year | 2022 |
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Publisher | Inderscience Publishers |
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Accepted author manuscript | File Access Level Open (open metadata and files) |
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Digital Object Identifier (DOI) | https://doi.org/10.1504/IJBPIM.2021.124023 |
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Web address (URL) | https://www.inderscience.com/info/ingeneral/forthcoming.php?jcode=ijbpim |
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Publication dates |
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Published online | 28 Jun 2022 |
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Published in print | 2021 |
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