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A Novel Trace Clustering Technique Based on Constrained Trace Alignment

机译:基于约束走线对齐的走线聚类新技术

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Whenever traditional process discovery techniques are confronted with complex and flexible environments, equipping all the traces with just one single model might lead to a spaghetti-like process description. Trace clustering which splits the logs into clusters and applies discovery algorithm per cluster has affirmed to be a versatile solution for that. Nevertheless, most trace clustering techniques are not precise enough due to the indiscriminate treatment on the activities captured in traces. As a result, the impacts of some important activities are reduced and some typical information may be distorted or even lost during comparison. In this paper, we propose a novel trace clustering technique that based on constrained traces alignment and then adapt two appropriate clustering strategies into process mining perspective. And experiments on real-life event logs show that our technique has compelling outperformance in terms of process models complexity and comprehensibility.
机译:每当传统的过程发现技术面临复杂而灵活的环境时,仅用一个模型就可以为所有的痕迹配备设备,这可能会导致类似意大利面条的过程描述。跟踪群集将日志分为多个群集,并在每个群集中应用发现算法,这已被证实是一种通用的解决方案。然而,由于对痕量捕获的活性进行了不加区别的处理,大多数痕量聚类技术不够精确。结果,减少了一些重要活动的影响,并且在比较过程中某些典型信息可能会失真甚至丢失。在本文中,我们提出了一种新的基于痕迹对齐的痕迹聚类技术,然后将两种合适的聚类策略应用到过程挖掘的角度。对现实事件日志的实验表明,就流程模型的复杂性和可理解性而言,我们的技术具有令人信服的出色性能。

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