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首页> 外文期刊>Journal of Data Intelligence >DISCOVER RELATIONS IN THE INDUSTRY 4.0 STANDARDS VIA UNSUPERVISED LEARNING ON KNOWLEDGE GRAPH EMBEDDINGS
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DISCOVER RELATIONS IN THE INDUSTRY 4.0 STANDARDS VIA UNSUPERVISED LEARNING ON KNOWLEDGE GRAPH EMBEDDINGS

机译:通过无监督的知识图形嵌入式了解行业4.0标准的关系

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Industry 4.0 (I4.0) standards and standardization frameworks provide a unified way to describe smart factories. Standards specify the main components, systems, and processes inside a smart factory and the interaction among all of them. Furthermore, standardization frameworks classify standards according to their functions into layers and dimensions. Albeit informative, frameworks can categorize similar standards differently. As a result, interoperability conflicts are generated whenever smart factories are described with miss-classified standards. Approaches like ontologies and knowledge graphs enable the integration of standards and frameworks in a structured way. They also encode the meaning of the standards, known relations among them, as well as their classification according to existing frameworks. This structured modeling of the I4.0 landscape using a graph data model provides the basis for graph-based analytical methods to uncover alignments among standards. This paper contributes to analyzing the relatedness among standards and frameworks; it presents an unsupervised approach for discovering links among standards. The proposed method resorts to knowledge graph embeddings to determine relatedness among standards-based on similarity metrics. The proposed method is agnostic to the technique followed to create the embeddings and to the similarity measure. Building on the similarity values, community detection algorithms can automatically create communities of highly similar standards. Our approach follows the homophily principle, and assumes that related standards are together in a community. Thus, alignments across standards are predicted and interoperability issues across them are solved. We empirically evaluate our approach on a knowledge graph of 249 I4.0 standards using the Trans* family of embedding models for knowledge graph entities. Our results are promising and suggest that relations among standards can be detected accurately.
机译:行业4.0(I4.0)标准和标准化框架提供了描述智能工厂的统一方式。标准指定智能工厂内的主要组件,系统和流程以及所有这些中的交互。此外,标准化框架将标准根据其功能分类为层和尺寸。虽然信息丰富的信息,框架可以不同地对类似的标准进行分类。因此,只要使用错过分类标准的智能工厂就会产生互操作性冲突。本体和知识图表等方法使以结构化方式集成标准和框架。他们还编码了标准的含义,其中已知关系,以及根据现有框架的分类。使用图数据模型的I4.0景观的这种结构化建模为基于图形的分析方法提供了基础,以发现标准之间的对齐。本文有助于分析标准和框架之间的相关性;它提出了一种无监督的方法,用于在标准之间发现链接。所提出的方法对知识图形嵌入来确定基于类似性指标的标准中的相关性。该方法对于创建嵌入物和相似度测量,该方法是不可知的。在相似性值上构建,社区检测算法可以自动创建高度相似标准的社区。我们的方法遵循了同性恋原理,并假设相关标准在一个社区中在一起。因此,预测标准的对准并解决了它们的互操作性问题。我们使用嵌入模型的嵌入模型的跨亚族来统一地评估我们在249 i4.0标准的知识图表中的方法。我们的结果是有前途的,并表明可以准确地检测标准之间的关系。

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