基于多层机器学习的业务流程剩余时间预测

Xiaoxiao Sun, Wenjie Hou, Yuke Ying, Dongjin Yu
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引用次数: 4

摘要

业务流程剩余时间预测监控是业务流程挖掘中的一个关键研究问题,它为涉众提供及时的预测信息,以便采取主动的纠正措施,降低流程执行风险(如超时或调整活动优先级)。然而,目前的剩余时间预测研究只考虑了单个进程实例内部属性的影响,而忽略了同时执行的多个实例之间的资源竞争。因此,本文考虑了资源竞争,并将多个实例间属性作为预测的输入。我们还根据历史事件日志确定优先级并选择一些强烈影响bp执行时间的关键活动,并将其作为预测的输入。同时,为了解决单一预测模型在复杂场景下的不稳定性,提出了利用叠加技术将XGBoost和LightGBM模型构建成多层混合模型。在四个真实数据集上的实验表明,我们考虑实例之间属性并将关键活动纳入混合模型的方法优于其他预测方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Remaining Time Prediction of Business Processes based on Multilayer Machine Learning
Remaining time predictive monitoring of business processes (BPs) is a key research issue in business process mining, which provides timely predictive information for stakeholders to take proactive corrective actions to reduce process execution risk such as exceeding time limit or to adjust the priority of activities. However, current researches on remaining time prediction only consider the impact of internal attributes of single process instance, but ignore the resource competition among multiple instances executed together. Therefore, this paper takes resource competition into consideration and characterizes several inter-instance attributes as the input of prediction. We also prioritize and select some key activities that strongly impact the execution time of BPs according to historical event logs and include them as input of the prediction. Meanwhile, in order to solve the instability of one single prediction model in complex scenarios, a multilayer hybrid model constructed from XGBoost and LightGBM models using stacking technique is proposed. Experiments on four real-life datasets show that our approach of considering attributes among instances and including key activities into a hybrid model outperforms other prediction methods.
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