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SeMi: A SEmantic Modeling machIne to build Knowledge Graphs with graph neural networks

机译:半:一个语义建模机,建立具有图形神经网络的知识图表

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SeMi (SEmantic Modeling machIne) is a tool to semi-automatically build large-scale Knowledge Graphs from structured sources such as CSV, JSON, and XML files. To achieve such a goal, SeMi builds the semantic models of the data sources, in terms of concepts and relations within a domain ontology. Most of the research contributions on automatic semantic modeling is focused on the detection of semantic types of source attributes. However, the inference of the correct semantic relations between these attributes is critical to reconstruct the precise meaning of the data. SeMi covers the entire process of semantic modeling: (i) it provides a semi-automatic step to detect semantic types; (ii) it exploits a novel approach to inference semantic relations, based on a graph neural network trained on background linked data. At the best of our knowledge, this is the first technique that exploits a graph neural network to support the semantic modeling process. Furthermore, the pipeline implemented in SeMi is modular and each component can be replaced to tailor the process to very specific domains or requirements. This contribution can be considered as a step ahead towards automatic and scalable approaches for building Knowledge Graphs.
机译:半(语义建模机器)是半自动构建来自结构化源的大规模知识图表的工具,如CSV,JSON和XML文件。为了实现这样的目标,在域本体中的概念和关系方面,半系统构建数据源的语义模型。大多数关于自动语义建模的研究贡献专注于检测语义类型的源属性。但是,这些属性之间正确语义关系的推断对于重建数据的精确含义至关重要。半覆盖语义建模的整个过程:(i)它提供了一种检测语义类型的半自动步骤; (ii)基于在背景链接数据上培训的图形神经网络,它利用了一种新的推理语义关系方法。在我们的知识中,这是一种利用图形神经网络来支持语义建模过程的第一种技术。此外,在半自动中实现的管道是模块化的,每个组件都可以被替换为定制进程到非常具体的域或要求。这种贡献可以被视为朝向建立知识图形的自动和可扩展方法的前进。

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