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Ontology Learning from Text: Why the Ontology Learning Layer Cake is not Viable

机译:从文本进行本体学习:为什么本体学习分层蛋糕不可行

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The goal of Ontology Learning from Text is to learn ontologies that represent domains or applications that change often. Manually learning and updating such ontologies is too expensive. This is the reason for the Ontology Learning discipline s emergence. The leading approach to Ontology Learning from Text is the Ontology Learning Layer Cake. This approach splits the task into four or five sequential tasks. Each of the tasks may use diverse methods, ranging from uses of Linguistic knowledge to Machine Learning. The authors review the shortcomings of the Ontology Learning Layer Cake approach and conclude that the approach is not viable for Ontology Learning from Text. They suggest alternative approaches that may help learning ontologies in an efficient, effective way
机译:从文本学习本体的目的是学习代表经常变化的领域或应用程序的本体。手动学习和更新这样的本体太昂贵了。这就是本体学习学科出现的原因。从文本进行本体学习的主要方法是本体学习层蛋糕。这种方法将任务分为四个或五个顺序的任务。每个任务可以使用多种方法,从使用语言知识到机器学习。作者回顾了本体学习分层蛋糕方法的缺点,并得出结论认为该方法不适用于从文本进行本体学习。他们提出了一些替代方法,这些方法可以帮助以有效,有效的方式学习本体

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