An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow

Infrequent behaviors of business process refer to behaviors that occur in very exceptional cases, and their occurrence frequency is low as their required conditions are rarely fulfilled. Hence, a strong coupling relationship between infrequent behavior and data flow exists. Furthermore, some infrequ...

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Main Authors: Li-li Wang, Xian-wen Fang, Esther Asare, Fang Huan
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Scientific Programming
Online Access:http://dx.doi.org/10.1155/2021/8874316
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spelling doaj-f866e5be211d476fb4935466f3bffe072021-07-02T21:01:51ZengHindawi LimitedScientific Programming1875-919X2021-01-01202110.1155/2021/8874316An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control FlowLi-li Wang0Xian-wen Fang1Esther Asare2Fang Huan3College of Mathematics and Big DataCollege of Mathematics and Big DataCollege of Mathematics and Big DataCollege of Mathematics and Big DataInfrequent behaviors of business process refer to behaviors that occur in very exceptional cases, and their occurrence frequency is low as their required conditions are rarely fulfilled. Hence, a strong coupling relationship between infrequent behavior and data flow exists. Furthermore, some infrequent behaviors may reveal very important information about the process. Thus, not all infrequent behaviors should be disregarded as noise, and identifying infrequent but correct behaviors in the event log is vital to process mining from the perspective of data flow. Existing process mining approaches construct a process model from frequent behaviors in the event log, mostly concentrating on control flow only, without considering infrequent behavior and data flow information. In this paper, we focus on data flow to extract infrequent but correct behaviors from logs. For an infrequent trace, frequent patterns and interactive behavior profiles are combined to find out which part of the behavior in the trace occurs in low frequency. And, conditional dependency probability is used to analyze the influence strength of the data flow information on infrequent behavior. An approach for identifying effective infrequent behaviors based on the frequent pattern under data awareness is proposed correspondingly. Subsequently, an optimization approach for mining of process models with infrequent behaviors integrating data flow and control flow is also presented. The experiments on synthetic and real-life event logs show that the proposed approach can distinguish effective infrequent behaviors from noise compared with others. The proposed approaches greatly improve the fitness of the mined process model without significantly decreasing its precision.http://dx.doi.org/10.1155/2021/8874316
collection DOAJ
language English
format Article
sources DOAJ
author Li-li Wang
Xian-wen Fang
Esther Asare
Fang Huan
spellingShingle Li-li Wang
Xian-wen Fang
Esther Asare
Fang Huan
An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
Scientific Programming
author_facet Li-li Wang
Xian-wen Fang
Esther Asare
Fang Huan
author_sort Li-li Wang
title An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
title_short An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
title_full An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
title_fullStr An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
title_full_unstemmed An Optimization Approach for Mining of Process Models with Infrequent Behaviors Integrating Data Flow and Control Flow
title_sort optimization approach for mining of process models with infrequent behaviors integrating data flow and control flow
publisher Hindawi Limited
series Scientific Programming
issn 1875-919X
publishDate 2021-01-01
description Infrequent behaviors of business process refer to behaviors that occur in very exceptional cases, and their occurrence frequency is low as their required conditions are rarely fulfilled. Hence, a strong coupling relationship between infrequent behavior and data flow exists. Furthermore, some infrequent behaviors may reveal very important information about the process. Thus, not all infrequent behaviors should be disregarded as noise, and identifying infrequent but correct behaviors in the event log is vital to process mining from the perspective of data flow. Existing process mining approaches construct a process model from frequent behaviors in the event log, mostly concentrating on control flow only, without considering infrequent behavior and data flow information. In this paper, we focus on data flow to extract infrequent but correct behaviors from logs. For an infrequent trace, frequent patterns and interactive behavior profiles are combined to find out which part of the behavior in the trace occurs in low frequency. And, conditional dependency probability is used to analyze the influence strength of the data flow information on infrequent behavior. An approach for identifying effective infrequent behaviors based on the frequent pattern under data awareness is proposed correspondingly. Subsequently, an optimization approach for mining of process models with infrequent behaviors integrating data flow and control flow is also presented. The experiments on synthetic and real-life event logs show that the proposed approach can distinguish effective infrequent behaviors from noise compared with others. The proposed approaches greatly improve the fitness of the mined process model without significantly decreasing its precision.
url http://dx.doi.org/10.1155/2021/8874316
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