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Recognizing Textual Entailment Using Description Logic And Semantic Relatedness

机译:使用描述逻辑和语义相关性识别文本蕴涵

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摘要

Textual entailment (TE) is a relation that holds between two pieces of text where one reading the first piece can conclude that the second is most likely true. Accurate approaches for textual entailment can be beneficial to various natural language processing (NLP) applications such as: question answering, information extraction, summarization, and even machine translation. For this reason, research on textual entailment has attracted a significant amount of attention in recent years. A robust logical-based meaning representation of text is very hard to build, therefore the majority of textual entailment approaches rely on syntactic methods or shallow semantic alternatives. In addition, approaches that do use a logical-based meaning representation, require a large knowledge base of axioms and inference rules that are rarely available. The goal of this thesis is to design an efficient description logic based approach for recognizing textual entailment that uses semantic relatedness information as an alternative to large knowledge base of axioms and inference rules.ududIn this thesis, we propose a description logic and semantic relatedness approach to textual entailment, where the type of semantic relatedness axioms employed in aligning the description logic representations are used as indicators of textual entailment. In our approach, the text and the hypothesis are first represented in description logic. The representations are enriched with additional semantic knowledge acquired by using the web as a corpus. udThe hypothesis is then merged into the text representation by learning semantic relatedness axioms on demand and a reasoner is then used to reason over the aligned representation. Finally, the types of axioms employed by the reasoner are used to learn if the text entails the hypothesis or not. To validate our approach we have implemented an RTE system named AORTE, and evaluated its performance on recognizing textual entailment using the fourth recognizing textual entailment challenge. Our approach achieved an accuracy of 68.8 on the two way task and 61.6 on the three way task which ranked the approach as 2nd when compared to the other participating runs in the same challenge. These results show that our description logical based approach can effectively be used to recognize textual entailment.
机译:文本蕴含(TE)是在两段文本之间保持的关系,其中一个阅读第一段可以得出结论,第二段很可能是真实的。准确的文本蕴涵方法可能有益于各种自然语言处理(NLP)应用程序,例如:问题解答,信息提取,摘要,甚至机器翻译。因此,近年来,关于文本蕴涵的研究引起了极大的关注。很难构建基于逻辑的健壮的文本含义表示,因此大多数文本包含方法都依赖于句法方法或浅层语义替代方法。此外,确实使用基于逻辑的含义表示的方法需要大量的公理和推理规则的知识库,而这些知识很少可用。本文的目的是设计一种有效的基于描述逻辑的方法来识别文本蕴涵,该方法使用语义相关性信息替代大型公理和推理规则知识库。 ud ud在本文中,我们提出了一种描述逻辑和语义文本蕴涵的相关性方法,其中用于对齐描述逻辑表示形式的语义相关性公理的类型用作文本蕴涵的指示。在我们的方法中,文本和假设首先以描述逻辑表示。通过使用网络作为语料库获得的其他语义知识丰富了表示形式。 ud然后通过学习按需语义关联公理将假设合并到文本表示中,然后使用推理器对对齐的表示进行推理。最后,推理机采用的公理类型用于了解文本是否包含假设。为了验证我们的方法,我们已经实施了一个名为AORTE的RTE系统,并使用第四个识别文本蕴涵性挑战评估了其在识别文本蕴涵性方面的性能。我们的方法在双向任务中实现了68.8的准确性,在三方任务中实现了61.6的准确性,与在同一挑战中的其他参与比赛相比,该方法将其排名为第二。这些结果表明,我们基于描述逻辑的方法可以有效地用于识别文本蕴含。

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    Siblini Reda;

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  • 年度 2014
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