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Automating construction of a domain ontology using a projective adaptive resonance theory neural network and Bayesian network

机译:使用射影自适应共振理论神经网络和贝叶斯网络自动构建领域本体

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摘要

Research on semantic webs has become increasingly widespread in the computer science community. The core technology of a semantic web is an artefact called an ontology. The major problem in constructing an ontology is the long period of time required. Another problem is the large number of possible meanings for the knowledge in the ontology. In this paper, we present a novel ontology construction based on artificial neural networks and a Bayesian network. First, we collected web pages related to the problem domain using search engines. The system then used the labels of the HTML tags to select keywords, and used WordNet to determine the meaningful keywords, called terms. Next, it calculated the entropy value to determine the weight of the terms. After the above steps, the projective adaptive resonance theory neural network clustered the collected web pages and found the representative term of each cluster of web pages using the entropy value. The system then used a Bayesian network to insert the terms and complete the hierarchy of the ontology. Finally, the system used a resource description framework to store and express the ontology results.
机译:语义网的研究已在计算机科学界变得越来越广泛。语义网的核心技术是一种称为本体的人工制品。构建本体的主要问题是所需时间长。另一个问题是本体中知识的大量可能含义。在本文中,我们提出了一种基于人工神经网络和贝叶斯网络的新型本体构造。首先,我们使用搜索引擎收集了与问题域相关的网页。然后,系统使用HTML标签的标签选择关键字,并使用WordNet确定有意义的关键字,称为术语。接下来,它计算熵值以确定项的权重。经过上述步骤,投影自适应共振理论神经网络将收集的网页聚类,并使用熵值找到每个网页聚类的代表项。然后,系统使用贝叶斯网络插入术语并完成本体的层次结构。最后,系统使用资源描述框架来存储和表达本体结果。

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