Towards Multi-perspective Conformance Checking with Fuzzy Sets

Nowadays organizations often need to employ data-driven techniques to audit their business processes and ensure they comply with laws and internal/external regulations. Failing in complying with the expected process behavior can indeed pave the way to inefficiencies or, worse, to frauds or abuses. A...

Full description

Bibliographic Details
Main Authors: Sicui Zhang, Laura Genga, Hui Yan, Hongchao Nie, Xudong Lu, Uzay Kaymak
Format: Article
Language:English
Published: Universidad Internacional de La Rioja (UNIR) 2021-03-01
Series:International Journal of Interactive Multimedia and Artificial Intelligence
Subjects:
Online Access:https://www.ijimai.org/journal/bibcite/reference/2911
id doaj-c4e13bd656f64c75a28c654e40db423b
record_format Article
spelling doaj-c4e13bd656f64c75a28c654e40db423b2021-03-03T22:41:37ZengUniversidad Internacional de La Rioja (UNIR)International Journal of Interactive Multimedia and Artificial Intelligence1989-16601989-16602021-03-016513414110.9781/ijimai.2021.02.013ijimai.2021.02.013Towards Multi-perspective Conformance Checking with Fuzzy SetsSicui ZhangLaura GengaHui YanHongchao NieXudong LuUzay KaymakNowadays organizations often need to employ data-driven techniques to audit their business processes and ensure they comply with laws and internal/external regulations. Failing in complying with the expected process behavior can indeed pave the way to inefficiencies or, worse, to frauds or abuses. An increasingly popular approach to automatically assess the compliance of the executions of organization processes is represented by alignment-based conformance checking. These techniques are able to compare real process executions with models representing the expected behaviors, providing diagnostics able to pinpoint possible discrepancies. However, the diagnostics generated by state of the art techniques still suffer from some limitations. They perform a crisp evaluation of process compliance, marking process behavior either as compliant or deviant, without taking into account the severity of the identified deviation. This hampers the accuracy of the obtained diagnostics and can lead to misleading results, especially in contexts where there is some tolerance with respect to violations of the process guidelines. In the present work, we discuss the impact and the drawbacks of a crisp deviation assessment approach. Then, we propose a novel conformance checking approach aimed at representing actors’ tolerance with respect to process deviations, taking it into account when assessing the severity of the deviations. As a proof of concept, we performed a set of synthetic experiments to assess the approach. The obtained results point out the potential of the usage of a more flexible evaluation of process deviations, and its impact on the quality and the interpretation of the obtained diagnostics.https://www.ijimai.org/journal/bibcite/reference/2911business processesconformance checkingdata perspectivefuzzy logic
collection DOAJ
language English
format Article
sources DOAJ
author Sicui Zhang
Laura Genga
Hui Yan
Hongchao Nie
Xudong Lu
Uzay Kaymak
spellingShingle Sicui Zhang
Laura Genga
Hui Yan
Hongchao Nie
Xudong Lu
Uzay Kaymak
Towards Multi-perspective Conformance Checking with Fuzzy Sets
International Journal of Interactive Multimedia and Artificial Intelligence
business processes
conformance checking
data perspective
fuzzy logic
author_facet Sicui Zhang
Laura Genga
Hui Yan
Hongchao Nie
Xudong Lu
Uzay Kaymak
author_sort Sicui Zhang
title Towards Multi-perspective Conformance Checking with Fuzzy Sets
title_short Towards Multi-perspective Conformance Checking with Fuzzy Sets
title_full Towards Multi-perspective Conformance Checking with Fuzzy Sets
title_fullStr Towards Multi-perspective Conformance Checking with Fuzzy Sets
title_full_unstemmed Towards Multi-perspective Conformance Checking with Fuzzy Sets
title_sort towards multi-perspective conformance checking with fuzzy sets
publisher Universidad Internacional de La Rioja (UNIR)
series International Journal of Interactive Multimedia and Artificial Intelligence
issn 1989-1660
1989-1660
publishDate 2021-03-01
description Nowadays organizations often need to employ data-driven techniques to audit their business processes and ensure they comply with laws and internal/external regulations. Failing in complying with the expected process behavior can indeed pave the way to inefficiencies or, worse, to frauds or abuses. An increasingly popular approach to automatically assess the compliance of the executions of organization processes is represented by alignment-based conformance checking. These techniques are able to compare real process executions with models representing the expected behaviors, providing diagnostics able to pinpoint possible discrepancies. However, the diagnostics generated by state of the art techniques still suffer from some limitations. They perform a crisp evaluation of process compliance, marking process behavior either as compliant or deviant, without taking into account the severity of the identified deviation. This hampers the accuracy of the obtained diagnostics and can lead to misleading results, especially in contexts where there is some tolerance with respect to violations of the process guidelines. In the present work, we discuss the impact and the drawbacks of a crisp deviation assessment approach. Then, we propose a novel conformance checking approach aimed at representing actors’ tolerance with respect to process deviations, taking it into account when assessing the severity of the deviations. As a proof of concept, we performed a set of synthetic experiments to assess the approach. The obtained results point out the potential of the usage of a more flexible evaluation of process deviations, and its impact on the quality and the interpretation of the obtained diagnostics.
topic business processes
conformance checking
data perspective
fuzzy logic
url https://www.ijimai.org/journal/bibcite/reference/2911
work_keys_str_mv AT sicuizhang towardsmultiperspectiveconformancecheckingwithfuzzysets
AT lauragenga towardsmultiperspectiveconformancecheckingwithfuzzysets
AT huiyan towardsmultiperspectiveconformancecheckingwithfuzzysets
AT hongchaonie towardsmultiperspectiveconformancecheckingwithfuzzysets
AT xudonglu towardsmultiperspectiveconformancecheckingwithfuzzysets
AT uzaykaymak towardsmultiperspectiveconformancecheckingwithfuzzysets
_version_ 1724232610172895232