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Towards semantic comparison of multi-granularity process traces

机译:走向多粒度过程痕迹的语义比较

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摘要

A process trace describes the steps taken in a workflow to generate a particular result. Understanding a process trace is critical to be able to verify data, enable its re-use and to make appropriate decisions. Given many process traces, each with a large amount of very low level information, it is a challenge to make process traces meaningful to different users. It is more challenging to compare two complex process traces generated by heterogeneous systems and having different levels of granularity. In this paper, we present a novel notion of multi-granularity process trace that attempts to capture the conceptual abstraction of large process traces at different levels of granularity by leveraging ontology information. Based on this notion, graph matching based algorithms with semantic filtering are developed to efficiently and effectively compute the similarity between two process traces by considering both structural similarity and semantic similarity. Our experiment using both real world and synthetic datasets demonstrates that our techniques provide a practical approach for process trace similarity measurement.
机译:流程跟踪描述了工作流中为生成特定结果而采取的步骤。了解过程跟踪对于能够验证数据,使其能够重用并做出适当的决定至关重要。给定许多过程跟踪,每个过程跟踪都包含大量的非常低级别的信息,因此使过程跟踪对不同的用户有意义是一个挑战。比较异构系统生成的,具有不同粒度级别的两个复杂过程轨迹更具挑战性。在本文中,我们提出了一种多粒度过程跟踪的新颖概念,该尝试试图通过利用本体信息来捕获不同粒度级别的大型过程跟踪的概念抽象。基于此概念,通过考虑结构相似性和语义相似性,开发了基于图匹配和语义过滤的算法,以有效地计算两个过程轨迹之间的相似性。我们使用真实世界和合成数据集进行的实验表明,我们的技术为过程痕迹相似性测量提供了一种实用的方法。

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