Nothing Special   »   [go: up one dir, main page]

skip to main content
research-article

MOEA for discovering Pareto-optimal process models: : an experimental comparison

Published: 01 January 2020 Publication History

Abstract

Process mining aims at discovering the workflow of a process from the event logs that provide insights into organisational processes for improving these processes and their support systems. Process mining abstracts the complex real-life datasets into a well-structured form known as a process model. In an ideal scenario, a process mining algorithm should produce a model that is simple, precise, general and fits the available logs. A conventional process mining algorithm typically generates a single process model that may not describe the recorded behaviour effectively. Multi-objective evolutionary algorithms (MOEA) for process mining optimise two or more objectives to generate several competing process models from the event logs. Subsequently, a user can choose a model based on his/her preference. In this paper, we have experimentally compared the popular second-generation MOEA algorithms for process mining.

Index Terms

  1. MOEA for discovering Pareto-optimal process models: an experimental comparison
            Index terms have been assigned to the content through auto-classification.

            Recommendations

            Comments

            Please enable JavaScript to view thecomments powered by Disqus.

            Information & Contributors

            Information

            Published In

            cover image International Journal of Computational Science and Engineering
            International Journal of Computational Science and Engineering  Volume 21, Issue 3
            2020
            158 pages
            ISSN:1742-7185
            EISSN:1742-7193
            DOI:10.1504/ijcse.2020.21.issue-3
            Issue’s Table of Contents

            Publisher

            Inderscience Publishers

            Geneva 15, Switzerland

            Publication History

            Published: 01 January 2020

            Author Tags

            1. process discovery
            2. evolutionary algorithms
            3. Pareto-front
            4. multi-objective optimisation
            5. process model quality dimensions
            6. PAES
            7. SPEA-II
            8. NSGA-II
            9. completeness
            10. generalisation

            Qualifiers

            • Research-article

            Contributors

            Other Metrics

            Bibliometrics & Citations

            Bibliometrics

            Article Metrics

            • 0
              Total Citations
            • 0
              Total Downloads
            • Downloads (Last 12 months)0
            • Downloads (Last 6 weeks)0
            Reflects downloads up to 16 Nov 2024

            Other Metrics

            Citations

            View Options

            View options

            Login options

            Media

            Figures

            Other

            Tables

            Share

            Share

            Share this Publication link

            Share on social media