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首页> 外文期刊>Journal of ambient intelligence and smart environments >Generating time-based label refinements to discover more precise process models
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Generating time-based label refinements to discover more precise process models

机译:生成基于时间的标签改进,以发现更精确的过程模型

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Process mining is a research field focused on the analysis of event data with the aim of extracting insights related to dynamic behavior. Applying process mining techniques on data from smart home environments has the potential to provide valuable insights into (un)healthy habits and to contribute to ambient assisted living solutions. Finding the right event labels to enable the application of process mining techniques is however far from trivial, as simply using the triggering sensor as the event label for sensor events results in uninformative models that allow for too much behavior (i.e., the models are overgeneralizing). Refinements of sensor level event labels suggested by domain experts have been shown to enable discovery of more precise and insightful process models. However, there exists no automated approach to generate refinements of event labels in the context of process mining In this paper we propose a framework for the automated generation of label refinements based on the time attribute of events, allowing us to distinguish behaviorally different instances of the same event type based on their time attribute. We show on a case study with real-life smart home event data that using automatically generated refined event labels in process discovery, we can find more specific, and therefore more insightful, process models. We observe that one label refinement could affect the usefulness of other label refinements when used together. Therefore, the order in when label refinements are selected could be of relevance when selecting multiple label refinements. To investigate the size of this effect in practice, we evaluate four strategies that take interplay between label refinements into account in different degrees on three real-life smart home event logs. These label refinement selection strategies range from linear time complexity for the strategy that does not at all account for the interplay between label refinements to a factorial time complexity for the strategy that fully accounts for this interplay effect. We found that in practice there is no difference between the quality of the process models that were discovered with the four label refinement strategies. Therefore, the effect of interplay between label refinements seems limited in practice and simple and fast strategies can be used to select multiple label refinements.
机译:过程挖掘是一项研究领域,专注于对事件数据分析,目的是提取与动态行为相关的见解。从智能家庭环境的数据应用过程采矿技术有可能为(联合国)健康的习惯提供有价值的见解,并为环境辅助生活解决方案提供贡献。找到右事件标签以启用流程挖掘技术的应用,然而,只需使用触发传感器作为传感器事件的事件标签,即用于传感器事件的事件标签,导致允许过多行为的未经信息模型(即,模型是过度成一化的) 。已经显示了域专家建议的传感器级事件标签的改进,以便能够发现更精确和富有洞察力的过程模型。然而,在本文中,没有自动化方法在流程挖掘的范围内生成事件标签的改进,我们提出了一种基于事件的时间属性自动生成标签改进的框架,允许我们区分行为不同的情况基于它们的时间属性的相同事件类型。我们展示了使用现实生活智能家庭事件数据的案例研究,它可以在过程发现中使用自动生成的精制事件标签,我们可以找到更具体的,更有洞察力的流程模型。我们观察到,在一起使用时,一个标签细化可能会影响其他标签改进的有用性。因此,在选择多个标签改进时,选择标签细化时的顺序可能是相关性的。为了研究实践中这种效果的规模,我们评估了四种策略,在三个真实智能家庭事件日志中以不同程度的不同程度计算在标签细化之间进行相互作用。这些标签细化选择策略范围从线性时间复杂度造成的策略,该策略在标签改进之间的相互作用中对完全占该相互作用效果的策略之间的因子复杂度。我们发现,在实践中,使用四个标签改进策略发现的过程模型的质量之间没有差异。因此,在实践中,标签改进之间的相互作用的效果似乎有限,并且可以使用简单且快速的策略来选择多个标签改进。

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