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Indulpet Miner: Combining Discovery Algorithms

机译:indulpet矿工:结合发现算法

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In this work, we explore an approach to process discovery that is based on combining several existing process discovery algorithms. We focus on algorithms that generate process models in the process tree notation, which are sound by design. The main components of our proposed process discovery approach are the Inductive Miner, the Evolutionary Tree Miner, the Local Process Model Miner and a new bottom-up recursive technique. We conjecture that the combination of these process discovery algorithms can mitigate some of the weaknesses of the individual algorithms. In cases where the Inductive Miner results in overgeneralizing process models, the Evolutionary Tree Miner can often mine much more precise models. At the other hand, while the Evolutionary Tree Miner is computationally expensive, running it only on parts of the log that the Inductive Miner is not able to represent with a precise model fragment can considerably limit the search space size of the Evolutionary Tree Miner. Local Process Models and bottom-up recursion aid the Evolutionary Tree Miner further by instantiating it with frequent process model fragments. We evaluate our approaches on a collection of real-life event logs and find that it does combine the advantages of the miners and in some cases surpasses other discovery techniques.
机译:在这项工作中,我们探索了一种过程发现,这是基于组合若干现有过程发现算法的方法。我们专注于在流程树符号中生成流程模型的算法,这些算法是通过设计的声音。我们拟议的过程发现方法的主要组成部分是归纳矿工,进化树矿工,当地过程模型矿工和新的自下而期递归技术。我们猜想这些过程发现算法的组合可以减轻各种算法的一些弱点。在归纳矿工导致过化过程模型的情况下,进化树矿工通常可以挖掘更精确的模型。另一方面,虽然进化树矿工是计算昂贵的,但仅在日志的部分上运行它,因为归纳矿工无法用精确的模型片段表示,可以大大限制进化树矿器的搜索空间大小。本地流程模型和自下而上递归通过使用频繁的过程模型片段实例化进一步帮助进化树矿工。我们评估我们在一系列现实生活事件日志上的方法,并发现它确实结合了矿工的优势,并且在某些情况下超越了其他发现技巧。

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