Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data

The contemporary methodology of business process modeling is closely tied to process mining. The aim of the study is to develop a method of creating business process models through the restoration of links between events recorded in logs in the absence of CaseID data based on graph neural networks....

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Main Authors: Oleg Kazakov, Natalya Azarenko, Irina Kozlova
Format: Article
Language:English
Published: Qubahan 2024-01-01
Series:Qubahan Academic Journal
Online Access:https://journal.qubahan.com/index.php/qaj/article/view/333
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author Oleg Kazakov
Natalya Azarenko
Irina Kozlova
author_facet Oleg Kazakov
Natalya Azarenko
Irina Kozlova
author_sort Oleg Kazakov
collection DOAJ
description The contemporary methodology of business process modeling is closely tied to process mining. The aim of the study is to develop a method of creating business process models through the restoration of links between events recorded in logs in the absence of CaseID data based on graph neural networks. The problem is solved by applying the graph convolutional networks architecture. The study employs a combination of a weighted adjacency matrix and an adjacency matric accounting for the graph data structure. Textual information about the tasks involved in the business process is considered when implementing the feature matrix using embeddings. The Navec embedding model is chosen to represent task titles as numerical vectors. The study was based on parsing the technological log of the 1C:Enterprise system. The obtained solutions make it possible to restore the required connection (Sequence flow) in the model of the "Approval of a commercial offer" business process in the absence of Case ID data in the event log as part of the "Reset request" task.
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institution Kabale University
issn 2709-8206
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publishDate 2024-01-01
publisher Qubahan
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series Qubahan Academic Journal
spelling doaj-art-ef02d9d6e3ad4a4c98929b16076030182025-02-03T10:12:20ZengQubahanQubahan Academic Journal2709-82062024-01-014110.58429/qaj.v4n1a333333Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier DataOleg Kazakov0Natalya Azarenko1Irina Kozlova2Bryansk State University of Engineering and Technology, RussiaBryansk State University of Engineering and Technology, RussiaBryansk State University of Engineering and Technology, Russia The contemporary methodology of business process modeling is closely tied to process mining. The aim of the study is to develop a method of creating business process models through the restoration of links between events recorded in logs in the absence of CaseID data based on graph neural networks. The problem is solved by applying the graph convolutional networks architecture. The study employs a combination of a weighted adjacency matrix and an adjacency matric accounting for the graph data structure. Textual information about the tasks involved in the business process is considered when implementing the feature matrix using embeddings. The Navec embedding model is chosen to represent task titles as numerical vectors. The study was based on parsing the technological log of the 1C:Enterprise system. The obtained solutions make it possible to restore the required connection (Sequence flow) in the model of the "Approval of a commercial offer" business process in the absence of Case ID data in the event log as part of the "Reset request" task. https://journal.qubahan.com/index.php/qaj/article/view/333
spellingShingle Oleg Kazakov
Natalya Azarenko
Irina Kozlova
Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
Qubahan Academic Journal
title Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
title_full Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
title_fullStr Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
title_full_unstemmed Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
title_short Developing a Method for Building Business Process Models Based on Graph Neural Networks in the Absence of Task Identifier Data
title_sort developing a method for building business process models based on graph neural networks in the absence of task identifier data
url https://journal.qubahan.com/index.php/qaj/article/view/333
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AT natalyaazarenko developingamethodforbuildingbusinessprocessmodelsbasedongraphneuralnetworksintheabsenceoftaskidentifierdata
AT irinakozlova developingamethodforbuildingbusinessprocessmodelsbasedongraphneuralnetworksintheabsenceoftaskidentifierdata