Motivated by the abundance of uncertain event data from multiple sources including physical devices and sensors, this paper presents the task of relating a stochastic process observation to a process model that can be rendered from a dataset. In contrast to previous research that suggested to transform a stochastically known event log into a less informative uncertain log with upper and lower bounds on activity frequencies, we consider the challenge of accommodating the probabilistic knowledge into conformance checking techniques. Based on a taxonomy that captures the spectrum of conformance checking cases under stochastic process observations, we present three types of challenging cases. The first includes conformance checking of a stochastically known log with respect to a given process model. The second case extends the first to classify a stochastically known log into one of several process models. The third case extends the two previous ones into settings in which process models are only stochastically known. The suggested problem captures the increasingly growing number of applications in which sensors provide probabilistic process information.
翻译:由于从多种来源(包括物理装置和传感器)获得大量不确定事件数据,本文件提出了将随机过程观测与从数据集中可以产生的过程模型联系起来的任务。与先前的研究不同,该项研究建议将已知的随机事件日志转换成信息较少的不确定日志,对活动频率有上下界限,我们考虑了将概率知识纳入合规检查技术的挑战。基于一种分类学,根据随机过程观测,我们提出了三类具有挑战性的案例。第一类包括对已知的随机记录进行符合特定过程模型的检查。第二个案例扩展了第一个案例,将已知的随机事件日志分类为若干过程模型之一。第三个案例将前两个案例扩展至程序模型仅具有随机学认识的环境。建议的问题捕捉了传感器提供概率性进程信息的日益增加的应用数量。