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Finding Complex Process-Structures by Exploiting the Token-Game

机译:通过利用代币博弈来发现复杂的过程结构

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In process discovery, the goal is to find, for a given event log, the model describing the underlying process. While process models can be represented in a variety of ways, in this paper we focus on the representation by Petri nets. Using an approach inspired by language-based regions, we start with a Petri net without any places, and then insert the maximal set of places considered fitting with respect to the behavior described by the log. Traversing and evaluating the whole set of all possible places is not feasible since their number is exponential in the number of activities. Therefore, we propose a strategy to drastically prune this search space to a small number of candidates, while still ensuring that all fitting places are found. This allows us to derive complex model structures that other discovery algorithms fail to discover. In contrast to traditional region-based approaches this new technique can handle infrequent behavior and therefore also noisy real-life event data. The drastic decrease of computation time achieved by our pruning strategy, as well as our noise handling capability, is demonstrated and evaluated by performing various experiments.
机译:在流程发现中,目标是为给定的事件日志找到描述基础流程的模型。尽管可以通过多种方式表示过程模型,但在本文中,我们着重介绍Petri网的表示方式。使用受基于语言的区域启发的方法,我们从没有任何位置的Petri网开始,然后插入被认为与日志描述的行为相适应的最大位置集。遍历和评估所有可能的地点的整个集合是不可行的,因为它们的数目在活动数目中是指数级的。因此,我们提出了一种策略,在不保证找到所有合适位置的情况下,将搜索空间大幅度削减给少量候选人。这使我们能够导出其他发现算法无法发现的复杂模型结构。与传统的基于区域的方法相比,该新技术可以处理不频繁的行为,因此也可以处理嘈杂的现实事件数据。通过执行各种实验来演示和评估通过我们的修剪策略所实现的计算时间的急剧减少以及我们的噪声处理能力。

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