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LocalProcessModelDiscovery: Bringing Petri Nets to the Pattern Mining World

机译:LocalProcessModeldiscovery:将Petri网带到了模式挖掘世界

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This paper introduces the tool Local Process Model Discovery, which is available as a package in the process mining toolkit ProM. LocalProcessModelDiscovery aims to discover local process models, i.e., frequent patterns extracted from event logs, where each frequent pattern is expressed in the form of a Petri net. Local process models can be positioned in-between process discovery and Petri net synthesis on the one hand, and sequential pattern mining on the other hand. Like pattern mining techniques, the LocalProcessModelDiscovery tool focuses on the extraction of a set of frequent patterns, in contrast to Petri net synthesis and process discovery techniques that aim to describe all behavior seen in an event log in the form of a single model. Like Petri net synthesis and process discovery techniques, the models discovered with LocalProcessModelDiscovery can express a diverse set of behavioral constructs. This contrasts sequential pattern mining techniques, which are limited to patterns that describe sequential orderings in the data and are unable to express loops, choices, and concurrency.
机译:本文介绍了工具本地过程模型发现,可作为过程挖掘工具包PROM中的包。 LocalProcessModeldIscovery旨在发现本地过程模型,即从事件日志中提取的频繁模式,其中每个频繁模式以Petri网的形式表示。本地过程模型可以一方面定位在过程发现和Petri网合成之间,另一方面逐渐挖掘。与模式挖掘技术一样,LocalProcessModeDeldIscovery工具侧重于一组频繁模式的提取,与Petri Net合成和过程发现技术相比,旨在描述在事件日志中以单个模型的形式进行描述的所有行为。与Petri净合成和过程发现技术一样,用LocalProcessModeDIscovery发现的模型可以表达多样化的行为结构。这与顺序模式挖掘技术相比,这限于描述数据中的顺序排序的模式,并且无法表达循环,选择和并发性。

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