Predictive business process monitoring aims at providing predictions about running instances by analyzing logs of completed cases in a business process. Recently, a lot of research focuses on increasing productivity and efficiency in a business process by forecasting potential problems during its executions. However, most of the studies lack suggesting concrete actions to improve the process. They leave it up to the subjective judgment of a user. In this paper, we propose a novel method to connect the results from predictive business process monitoring to actual business process improvements. More in detail, we optimize the resource allocation in a non-clairvoyant online environment, where we have limited information required for scheduling, by exploiting the predictions. The proposed method integrates the offline prediction model construction that predicts the processing time and the next activity of an ongoing instance using Bayesian Neural Networks (BNNs) with the online resource allocation that is extended from the minimum cost and maximum flow algorithm. To validate the proposed method, we performed experiments using an artificial event log and a real-life event log from a global financial organization.
翻译:预测性商业过程监测的目的是通过分析商业过程中已完成案件的日志来预测运行实例。 最近,许多研究的重点是通过预测执行过程中可能出现的问题来提高商业过程中的生产率和效率。 然而,大多数研究没有提出改进过程的具体行动。它们留给用户主观判断。在本文件中,我们提出了一个新方法,将预测性商业过程监测的结果与实际业务流程改进联系起来。更详细地说,我们利用预测,优化了在非clairvoyant在线环境中的资源分配,在非crairvoyant网上环境中,我们利用预测所需的信息有限。拟议方法将预测处理时间和使用Bayesian Neural Network (BNN) 的离线性预测模型建设以及当前使用Bayesian Neural 网络(BNNS) 的下一个活动的在线活动与从最低成本和最大流量算法扩展的在线资源分配结合起来。为了验证拟议方法,我们用一个全球金融组织的人造事件日志和真实生活事件日志进行了实验。