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Machine Learning in Business Process Monitoring: A Comparison of Deep Learning and Classical Approaches Used for Outcome Prediction

机译:业务流程监测中的机器学习:用于结果预测的深度学习和经典方法的比较

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Predictive process monitoring aims at forecasting the behavior, performance, and outcomes of business processes at runtime. It helps identify problems before they occur and re-allocate resources before they are wasted. Although deep learning (DL) has yielded breakthroughs, most existing approaches build on classical machine learning (ML) techniques, particularly when it comes to outcome-oriented predictive process monitoring. This circumstance reflects a lack of understanding about which event log properties facilitate the use of DL techniques. To address this gap, the authors compared the performance of DL (i.e., simple feedforward deep neural networks and long short term memory networks) and ML techniques (i.e., random forests and support vector machines) based on five publicly available event logs. It could be observed that DL generally outperforms classical ML techniques. Moreover, three specific propositions could be inferred from further observations: First, the outperformance of DL techniques is particularly strong for logs with a high variant-to-instance ratio (i.e., many non-standard cases). Second, DL techniques perform more stably in case of imbalanced target variables, especially for logs with a high event-to-activity ratio (i.e., many loops in the control flow). Third, logs with a high activity-to-instance payload ratio (i.e., input data is predominantly generated at runtime) call for the application of long short term memory networks. Due to the purposive sampling of event logs and techniques, these findings also hold for logs outside this study.
机译:预测过程在运行期间预测的行为,性能和业务流程的成果监控目标。它有助于防患于未然,他们被浪费之前重新分配资源,发现问题。虽然深度学习(DL)已经取得了突破,大多数现有的经典机器学习(ML)技术方法的建立,特别是当它涉及到注重结果的预测过程监控。这种情况反映了一个缺乏了解有关该事件日志属性方便的使用DL技术。为弥补这一空白,作者比较DL(即,简单的前馈深层神经网络和长短期记忆网络)和ML技术(即,随机森林和支持向量机)的基于五个公开可用的事件日志的性能。它可以观察到,DL通常优于传统的ML技术。此外,三个具体命题可从进一步观察可以推断:首先,DL技术突出表现为具有高的变体与实例比(即,许多非标准例)日志特别强。第二,DL技术中不平衡目标变量的情况下执行更稳定地,特别是对于具有高事件到活性比(即,许多循环中的控制流程)日志。第三,具有高活性与实例有效载荷比(即,输入数据在运行时产生的主要)调用为长短期存储器网络的应用程序日志。由于事件日志和技术的立意抽样,这些研究结果同样适用于该研究之外的日志。

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