VaryMinions: leveraging RNNs to identify variants in event logs

Sophie Fortz, Paul Temple, Xavier Devroey, P. Heymans, Gilles Perrouin
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引用次数: 4

Abstract

Business processes have to manage variability in their execution, e.g., to deliver the correct building permit in different municipalities. This variability is visible in event logs, where sequences of events are shared by the core process (building permit authorisation) but may also be specific to each municipality. To rationalise resources (e.g., derive a configurable business process capturing all municipalities’ permit variants) or to debug anomalous behaviour, it is mandatory to identify to which variant a given trace belongs. This paper supports this task by training Long Short Term Memory (LSTMs) and Gated Recurrent Units (GRUs) algorithms on two datasets: a configurable municipality and a travel expenses workflow. We demonstrate that variability can be identified accurately (>87%) and discuss the challenges of learning highly entangled variants.
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VaryMinions:利用rnn来识别事件日志中的变量
业务流程必须管理其执行中的可变性,例如,在不同的市政当局交付正确的建筑许可。这种可变性在事件日志中可见,事件序列由核心流程(建筑许可授权)共享,但也可能特定于每个市政当局。为了使资源合理化(例如,派生一个可配置的业务流程,捕获所有市政当局的许可变体)或调试异常行为,必须确定给定跟踪属于哪个变体。本文通过在两个数据集上训练长短期记忆(LSTMs)和门控循环单元(gru)算法来支持这一任务:一个可配置的城市和一个差旅费用工作流。我们证明了可变性可以被准确地识别(>87%),并讨论了学习高度纠缠变量的挑战。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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