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Knowledge-Based Mining of Exceptional Patterns in Logistics Data: Approaches and Experiences in an Industry 4.0 Context

机译:基于知识的物流数据异常模式挖掘:工业4.0上下文中的方法和经验

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In the context of Industry 4.0 and smart production, industrial large-scale enterprise data is applied for enabling data-driven analysis and modeling methods. However, the majority of the currently applied approaches consider the data in isolated fashion such that data from different sources, e.g., from large data warehouses are only considered independently. Furthermore, connections and relations between those data, i.e., relating to semantic dependencies are typically not considered, while these would open up integrated semantic approaches for effective data mining methods. This paper tackles these issues and demonstrates approaches and experiences in the context of a real-world case study in the industrial logistics domain: We propose knowledge-based data analysis applying subgroup discovery for identifying exceptional patterns in a semantic approach using appropriately constructed knowledge graphs.
机译:在工业4.0和智能生产的背景下,工业大型企业数据被用于实现数据驱动的分析和建模方法。但是,大多数当前应用的方法以孤立的方式考虑数据,使得仅独立地考虑来自不同来源(例如来自大型数据仓库)的数据。此外,通常不考虑那些数据之间的连接和关系,即与语义依赖性有关的连接和关系,而这些将为有效的数据挖掘方法打开集成的语义方法。本文解决了这些问题,并在工业物流领域的实际案例研究中演示了方法和经验:我们提出了基于知识的数据分析方法,该方法运用子组发现来使用适当构造的知识图来识别语义方法中的异常模式。

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