论文标题

使用复发性神经网络进行预测过程模型监测

Predictive Process Model Monitoring using Recurrent Neural Networks

论文作者

De Smedt, Johannes, De Weerdt, Jochen

论文摘要

预测过程监视的领域集中于病例级模型,以预测一个特定的结果,例如特定目标,(剩余)时间或下一个活动/剩余序列。最近,已经以过程模型预测的形式提出了一种更长的模型,整个模型的方法,该方法通过使用时间序列预测的所有活动对活性关系的预测来预测整个过程模型的未来状态。 本文介绍了\ emph {预测过程模型监视}的概念,该}位于预测过程监视和过程模型预测的中间。具体而言,通过将过程模型建模为活动之间存在的一组约束,我们可以在活动之间与过程模型预测相比,在活动之间捕获更详细的信息,同时与典型的预测过程监控目标兼容,这些过程通常以与这些约束相同的语言表达。为了实现这一目标,引入了流程,即动作(PAM),即一种新型技术,能够共同采矿并预测流程执行的各个窗口中活动之间的声明过程约束。 PAM预测声明性规则对痕迹(基于目标)的规则(基于目标)也支持所有约束作为过程模型(基于模型)的预测。受到时间上的高维输入量身定制的视频分析启发的各种复发性神经网络拓扑用于用窗口作为时间步骤来对过程模型演变进行建模,包括编码器 - 码头长期短期记忆网络和卷积长的短期内存网络。在现实生活事件日志上获得的结果表明,这些拓扑在预测准确性和精度方面是有效的。

The field of predictive process monitoring focuses on case-level models to predict a single specific outcome such as a particular objective, (remaining) time, or next activity/remaining sequence. Recently, a longer-horizon, model-wide approach has been proposed in the form of process model forecasting, which predicts the future state of a whole process model through the forecasting of all activity-to-activity relations at once using time series forecasting. This paper introduces the concept of \emph{predictive process model monitoring} which sits in the middle of both predictive process monitoring and process model forecasting. Concretely, by modelling a process model as a set of constraints being present between activities over time, we can capture more detailed information between activities compared to process model forecasting, while being compatible with typical predictive process monitoring objectives which are often expressed in the same language as these constraints. To achieve this, Processes-As-Movies (PAM) is introduced, i.e., a novel technique capable of jointly mining and predicting declarative process constraints between activities in various windows of a process' execution. PAM predicts what declarative rules hold for a trace (objective-based), which also supports the prediction of all constraints together as a process model (model-based). Various recurrent neural network topologies inspired by video analysis tailored to temporal high-dimensional input are used to model the process model evolution with windows as time steps, including encoder-decoder long short-term memory networks, and convolutional long short-term memory networks. Results obtained over real-life event logs show that these topologies are effective in terms of predictive accuracy and precision.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源