While there have been lots of work studying frequent subgraph mining, very rare publications have discussed frequent subnet mining from more complicated data structures such as Petri nets. This paper studies frequent subnets mining from a single large Petri net. We follow the idea of transforming a Petri net in net graph form and to mine frequent sub-net graphs to avoid high complexity. Technically, we take a minimal traversal approach to produce a canonical label of the big net graph. We adapted the maximal independent embedding set approach to the net graph representation and proposed an incremental pattern growth (independent embedding set reduction) way for discovering frequent sub-net graphs from the single large net graph, which are finally transformed back to frequent subnets. Extensive performance studies made on a single large Petri net, which contains 10K events, 40K conditions and 30 K arcs, showed that our approach is correct and the complexity is reasonable.
翻译:虽然在研究频繁的子网采矿方面做了大量工作,但非常罕见的出版物讨论了经常从Petri Net等更复杂的数据结构中进行子网采矿的问题。本文研究经常从一个大的Petri 网中进行子网采矿。我们遵循了将Petri 网转换成净图状的想法,并用经常的子网图进行采矿以避免高度复杂。技术上,我们采取了最低限度的跨度方法来制作大网图的金字形标签。我们调整了最大独立嵌入套式方法,以适应净图示,并提出了一种递增模式(独立嵌入套式减少)的方法,以从一个大网图中发现经常的子网图,最终将其转换为经常的子网。对包含10K事件、40K条件和30K弧的单一大Petri 网进行的广泛绩效研究显示,我们的方法是正确的,复杂性是合理的。