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A Word + Character Embedding Based Relation Extraction Frame for Domain Ontology of Natural Resources and Environment

机译:基于Word +字符的自然资源与环境域本体的关系提取帧

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Building domain ontology is a challenging problem, and there are many different approaches for domain ontology construction. However, most of these approaches are still mainly using manual methods [1]. Ontology enrichment is a fairly standard approach in domain ontology construction, in which semi-automated methods and automated methods of ontology learning from a derived ontology. Relation extraction is one of the ways for ontology enrichment. Relation extraction techniques include law-based techniques, machine learning-based techniques with three typical methods: supervised learning, semi-supervised learning, and unsupervised learning. This paper proposes a word + character embedding-based relation extraction frame for the Vietnamese domain ontology of natural resources and environment. The model's effect was demonstrated by experiments in the domain of natural resources and the environment and achieving promising results.
机译:构建域本体是一个具有挑战性的问题,并且有许多不同的域本体结构方法。 但是,大多数方法仍然主要使用手动方法[1]。 本体丰富是域本体论建设的相当标准方法,其中来自派生本体的半自动方法和本体学习的自动化方法。 关系提取是本体富集的方法之一。 关系提取技术包括基于法律的技术,基于机器学习的技术,具有三种典型方法:监督学习,半监督学习和无监督学习。 本文提出了基于Word +字符嵌入的基于词的自然资源和环境本体论的关系提取框架。 通过自然资源领域和环境领域的实验证明了模型的效果,并实现了有希望的结果。

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