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A Deep Learning Approach for Predicting Process Behaviour at Runtime

机译:预测运行时处理过程行为的深度学习方法

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Predicting the final state of a running process, the remaining time to completion or the next activity of a running process are important aspects of runtime process management. Runtime management requires the ability to identify processes that are at risk of not meeting certain criteria in order to offer case managers decision information for timely intervention. This in turn requires accurate prediction models for process outcomes and for the next process event, based on runtime information available at the prediction and decision point. In this paper, we describe an initial application of deep learning with recurrent neural networks to the problem of predicting the next process event. This is both a novel method in process prediction, which has previously relied on explicit process models in the form of Hidden Markov Models (HMM) or annotated transition systems, and also a novel application for deep learning methods.
机译:预测运行过程的最终状态,剩余时间或正在运行进程的下一个活动是运行时进程管理的重要方面。运行时管理需要能够识别有可能不符合某些标准的风险的流程,以便提供案例管理人员决定信息以及时干预。这反过来需要基于预测和决策点可用的运行时信息,需要准确的预测模型和过程结果和下一个过程事件。在本文中,我们描述了深度学习与经常性神经网络的初步应用于预测下一个过程事件的问题。这既是过程预测的新方法,这些方法预先依赖于隐马尔可夫模型(HMM)或带注释的转换系统的形式,以及深度学习方法的新应用。

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