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The Effect of Noise on Mined Declarative Constraints

机译:噪声对开采陈述约束的影响

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Declarative models are increasingly utilized as representational format in process mining. Models created from automatic process discovery are meant to summarize complex behaviors in a compact way. Therefore, declarative models do not define all permissible behavior directly, but instead define constraints that must be met by each trace of the business process. While declarative models provide compactness, it is up until now not clear how robust or sensitive different constraints are with respect to noise. In this paper, we investigate this question from two angles. First, we establish a constraint hierarchy based on formal relationships between the different types of Declare constraints. Second, we conduct a sensitivity analysis to investigate the effect of noise on different types of declarative rules. Our analysis reveals that an increasing degree of noise reduces support of many constraints. However, this effect is moderate on most of the constraint types, which supports the suitability of Declare for mining event logs with noise.
机译:在过程挖掘中越来越多地利用声明模型作为代表格式。从自动进程发现创建的模型旨在以紧凑的方式汇总复杂的行为。因此,声明性模型不会直接定义所有允许的行为,而是定义业务流程的每种跟踪必须满足的约束。虽然陈述式型号提供紧凑性,但它才截至目前尚不清楚稳健或敏感的不同约束是如何相对于噪音。在本文中,我们从两个角度调查了这个问题。首先,我们根据不同类型的声明约束之间的正式关系建立约束层次结构。其次,我们进行敏感性分析,以调查噪声对不同类型的陈述规则的影响。我们的分析表明,增加的噪音程度降低了许多限制的支持。然而,大多数约束类型的这种效果是适中的,这支持挖掘挖掘挖掘事件日志的适用性。

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