An Ontological Analysis and Natural Language Processing of Figures of Speech

Christiana Panayiotou
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引用次数: 1

Abstract

The purpose of the current paper is to present an ontological analysis to the identification of a particular type of prepositional figures of speech via the identification of inconsistencies in ontological concepts. Prepositional noun phrases are used widely in a multiplicity of domains to describe real world events and activities. However, one aspect that makes a prepositional noun phrase poetical is that the latter suggests a semantic relationship between concepts that does not exist in the real world. The current paper shows that a set of rules based on WordNet classes and an ontology representing human behaviour and properties, can be used to identify figures of speech due to the discrepancies in the semantic relations of the concepts involved. Based on this realization, the paper describes a method for determining poetic vs. non-poetic prepositional figures of speech, using WordNet class hierarchies. The paper also addresses the problem of inconsistency resulting from the assertion of figures of speech in ontological knowledge bases, identifying the problems involved in their representation. Finally, it discusses how a contextualized approach might help to resolve this problem.
修辞的本体论分析与自然语言处理
本文的目的是通过识别本体论概念中的不一致性,对特定类型的介词词性的识别进行本体论分析。介词名词短语在许多领域被广泛用于描述现实世界中的事件和活动。然而,介词名词短语富有诗意的一个方面是,后者暗示了现实世界中不存在的概念之间的语义关系。目前的论文表明,由于所涉及的概念的语义关系存在差异,一组基于WordNet类和表示人类行为和属性的本体的规则可以用于识别词性。基于这一认识,本文描述了一种使用WordNet类层次结构确定诗意和非诗意介词词性的方法。本文还解决了本体论知识库中由于修辞格的断言而导致的不一致问题,并确定了修辞格表示中涉及的问题。最后,它讨论了情境化方法如何帮助解决这个问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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