Online Model Generation for Scalable Predictive Process Monitoring

P. Rico, F. Cuadrado, Juan C. Dueñas
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Abstract

Predictive process monitoring techniques are intended to forecast outcomes of running process instances. This is achieved through the use of predictive models inferred from past event logs. However, the use of such procedures in scenarios where there is an initial lack of previous data or concept drift can be especially challenging. To overcome those limitations, this paper is focused on enabling online model generation, addressing problems such as uncertainty about process completeness. Further, a scalable streaming system based on Apache Flink platform is built and applied on an incident management system dataset in order to assess prediction performance. The results presented show the capacity of these techniques to support predictive process monitoring.
可扩展预测过程监控的在线模型生成
预测性流程监控技术旨在预测运行流程实例的结果。这是通过使用从过去的事件日志推断出的预测模型来实现的。然而,在最初缺乏先前数据或概念漂移的情况下使用这种程序可能特别具有挑战性。为了克服这些限制,本文的重点是支持在线模型生成,解决诸如过程完整性的不确定性等问题。在此基础上,构建了一个基于Apache Flink平台的可扩展流系统,并将其应用于事件管理系统数据集,以评估预测性能。结果表明,这些技术支持预测过程监控的能力。
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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