Formulating the potentials of clustering of event data over multiple entities for decision support: a network embeddings approach

IF 2.8 Q2 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Pavlos Delias, Daniela Grigori
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引用次数: 0

Abstract

ABSTRACTEvent data from business processes evidence their patterns, behaviors, and dysfunctions. Analytics techniques like clustering and sorting can reveal relevant insights, when data are correlated with a single case identifier. However, when multiple entities are involved, unidimensional models are challenged. We introduce a novel method for analyzing business processes involving multiple interacting entity types. Our approach employs embedding representations to capture pairwise similarities among entity types and their interrelationships. An optimization problem encompasses similarity matrices, cross-entity relationship matrices, and embeddings. An iterative algorithm refines this model, yielding embedding representations and cluster assignments for each entity type. Formulating our method across three diverse business scenarios demonstrates its practicality and potential. Our results, through a proof of concept using real-world data, underscore the value of accounting for the multifaceted nature of business processes, showing substantial improvements and qualitative distinctions compared to unidimensional models.KEYWORDS: Process analyticsmultiple entitiesclusteringnetwork embeddingsdecision supportproblem formulation Disclosure statementNo potential conflict of interest was reported by the authors.Notes1. https://www.win.tue.nl/bpi/2017/challenge.html
为决策支持制定多个实体上事件数据聚类的潜力:一种网络嵌入方法
来自业务流程的事件数据证明了它们的模式、行为和功能障碍。当数据与单个案例标识符相关联时,聚类和排序等分析技术可以揭示相关的见解。然而,当涉及多个实体时,单维模型就会受到挑战。我们介绍了一种分析涉及多个交互实体类型的业务流程的新方法。我们的方法采用嵌入表示来捕获实体类型及其相互关系之间的成对相似性。优化问题包括相似矩阵、跨实体关系矩阵和嵌入。迭代算法对该模型进行了细化,为每种实体类型生成嵌入表示和聚类分配。跨三个不同的业务场景制定我们的方法,展示了它的实用性和潜力。通过使用真实世界数据的概念验证,我们的结果强调了对业务流程的多面性进行核算的价值,显示了与一维模型相比的实质性改进和定性区别。关键词:过程分析、多实体、聚类、网络嵌入、决策支持、问题表述披露声明作者未报告潜在利益冲突。https://www.win.tue.nl/bpi/2017/challenge.html
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来源期刊
Journal of Decision Systems
Journal of Decision Systems OPERATIONS RESEARCH & MANAGEMENT SCIENCE-
CiteScore
6.30
自引率
23.50%
发文量
55
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