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首页> 外文期刊>International Journal on Advances in ICT for Emerging Regions (ICTer) >Word Vector Embeddings and Domain Specific Semantic based Semi-Supervised Ontology Instance Population
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Word Vector Embeddings and Domain Specific Semantic based Semi-Supervised Ontology Instance Population

机译:词向量嵌入和基于领域特定语义的半监督本体实例填充

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An ontology defines a set of representational primitives which model a domain of knowledge or discourse. With the arising fields such as information extraction and knowledge management, the role of ontology has become a driving factor of many modern day systems. Ontology population, on the other hand, is an inherently problematic process, as it needs manual intervention to prevent the conceptual drift. The semantic sensitive word embedding has become a popular topic in natural language processing with its capability to cope with the semantic challenges. Incorporating domain specific semantic similarity with the word embeddings could potentially improve the performance in terms of semantic similarity in specific domains. Thus, in this study, we propose a novel way of semi-supervised ontology population through word embeddings and domain specific semantic similarity 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 which outperformed the candidate models by 33% in comparison to the best performed candidate model.
机译:本体定义了一组表示性原语,它们对知识或话语领域进行建模。在诸如信息提取和知识管理等新兴领域中,本体论的作用已成为许多现代系统的驱动因素。另一方面,本体填充是一个固有的问题过程,因为它需要人工干预以防止概念上的偏离。语义敏感词嵌入凭借其应对语义挑战的能力已成为自然语言处理中的热门话题。将领域特定的语义相似性与单词嵌入结合在一起,可以在特定领域中的语义相似性方面提高性能。因此,在本研究中,我们提出了一种新的以词嵌入和领域特定语义相似度为基础的半监督本体种群的方法。我们建立了几种模型,包括传统基准模型和基于词嵌入的新型模型。最后,我们将它们整合在一起,形成一个协同模型,与最佳候选模型相比,该模型的表现优于候选模型33%。

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