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Semi-supervised instance population of an ontology using word vector embedding

机译:使用词向量嵌入的本体的半监督实例种群

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In many modern-day systems such as information extraction and knowledge management agents, ontologies play a vital role in maintaining the concept hierarchies of the selected domain. However, ontology population has become a problematic process due to its nature of heavy coupling with manual human intervention. With the use of word embeddings in the field of natural language processing, it became a popular topic due to its ability to cope up with semantic sensitivity. Hence, in this study we propose a novel way of semi-supervised ontology population through word embeddings as the basis. We built several models including traditional benchmark models and new types of models which are based on word embeddings. Finally, we ensemble them together to come up with a synergistic model with better accuracy. We demonstrate that our ensemble model can outperform the individual models.
机译:在许多现代系统中,例如信息提取和知识管理代理,本体在维护所选域的概念层次结构中起着至关重要的作用。然而,由于本体人口与人工干预的严重耦合,其本质已成为一个有问题的过程。随着自然语言处理领域中单词嵌入的使用,由于其具有应付语义敏感性的能力,它成为一个流行的话题。因此,在这项研究中,我们提出了一种新的以词嵌入为基础的半监督本体种群的方法。我们建立了几种模型,包括传统的基准模型和基于词嵌入的新型模型。最后,我们将它们组合在一起,以提供一个精度更高的协同模型。我们证明了我们的集成模型可以胜过单个模型。

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