面向匿名过程挖掘

Andrea Burattin, M. Conti, Daniele Turato
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引用次数: 21

摘要

流程挖掘是一个应用于组织中运行的业务流程生成的数据集的现代技术家族,目的是改进和获得流程本身的有用见解和性能度量(具有明显的社会和经济效益)。虽然这些技术在理解业务流程方面非常有前途,但它们在组织内部的完整和有效实现通常是不可能的。因此,与大多数非核心活动,特别是大多数信息和通信技术服务类似,公司评估外包这种任务的可能性。然而,与业务流程相关的数据集的机密性通常是大多数现代公司的关键资产。然后,为了避免泄露这些信息可能带来的威胁,大多数公司决定不从这些流程挖掘技术中获益。在这项工作中,我们提出了一种可能的方法来实现一个完整的解决方案,该解决方案允许将过程挖掘外包,而不会破坏数据集和过程的机密性。此外,我们提供了我们提出的方法的原型实现,并运行了几个实验来证实我们的方法的可行性。我们认为,为了消除阻碍公司从外包过程挖掘中充分受益的障碍,本文中强调的这一点是一个重要的工作方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward an Anonymous Process Mining
Process mining is a modern family of techniques applied to datasets generated from business processes run in organizations, in order to improve and obtain useful insights and performance measurements on the processes themselves (with clear societal and economical benefits). While these techniques are very promising in understanding business processes, their complete and efficient implementation inside the organizations is often not possible. Hence, in a way similar to what is done for most non core activities, and in particular for most ICT services, companies evaluate the possibility of outsourcing such task. However, the confidentiality of the dataset related to the business processes are often key assets for most of modern companies. Then, in order to avoid threats that might come from disclosing such information, most companies decide not to benefit from these process mining techniques. In this work, we propose a possible approach toward a complete solution which allows outsourcing of Process Mining without thwarting the confidentiality of the dataset and processes. Furthermore, we provide a prototype implementation of our proposed approach and run several experiments that confirmed the feasibility of our approach. We believe the one highlighted in this paper is an important direction to work on, in order to remove the obstacles that prevent companies to fully benefit from outsourcing process mining.
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