发现帕累托最优过程模型的MOEA:一个实验比较

Naveen Kumar, Manoj Agarwal, S. Deshmukh, Shikha Gupta
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引用次数: 5

摘要

流程挖掘旨在从事件日志中发现流程的工作流,从而提供对组织流程的洞察,从而改进这些流程及其支持系统。流程挖掘将复杂的现实数据集抽象为结构良好的形式,称为流程模型。在理想的场景中,流程挖掘算法应该生成简单、精确、通用且适合可用日志的模型。传统的流程挖掘算法通常生成单个流程模型,该模型可能无法有效地描述记录的行为。过程挖掘的多目标进化算法(MOEA)通过优化两个或多个目标,从事件日志中生成多个相互竞争的过程模型。随后,用户可以根据自己的喜好选择模型。在本文中,我们实验比较了流行的第二代MOEA算法用于过程挖掘。
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MOEA for discovering Pareto-optimal process models: an experimental comparison
Process mining aims at discovering the workflow of a process from the event logs that provide insights into organisational processes for improving these processes and their support systems. Process mining abstracts the complex real-life datasets into a well-structured form known as a process model. In an ideal scenario, a process mining algorithm should produce a model that is simple, precise, general and fits the available logs. A conventional process mining algorithm typically generates a single process model that may not describe the recorded behaviour effectively. Multi-objective evolutionary algorithms (MOEA) for process mining optimise two or more objectives to generate several competing process models from the event logs. Subsequently, a user can choose a model based on his/her preference. In this paper, we have experimentally compared the popular second-generation MOEA algorithms for process mining.
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