基于内隐显示理论的讽刺表达自动检测

Akinori Sato, I. Tanev, K. Shimohara
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引用次数: 0

摘要

计算机要自动检测出讽刺是不容易的。因为要理解一个句子中的反讽,就必须从分支中推断出隐藏在单词背后的意思。反讽的发现需要常识和对现实的共同理解作为背景知识。字面意思和说话者想表达的意思往往不匹配,这使得自然语言处理成为一项困难的任务。本研究验证了基于内隐展示理论的反语自动检测的有效性。内隐展示理论作为一种综合性的反语理论于1997年被提出,作为反语研究的代表理论,其有效性和优越性已得到充分体现。我们从一个大规模的讽刺语料库中选择了包含内隐显示理论的讽刺句子,并使用深度学习模型进行了两类分类,以评估内隐显示理论在自然语言处理中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic detection of ironic expressions based on the Implicit Display Theory
It is not easy for a computer to automatically detect irony. Because in order to understand the irony in a sentence, it is necessary to infer the meaning hidden behind the word from the branch. Common sense and common understanding of reality are required as background knowledge for detecting irony. The literal meaning and the meaning intended by a speaker do not often match, and this makes it a difficult task in natural language processing. In this research, the effectiveness of automatic detection of irony based on the Implicit Display Theory was verified. The Implicit Display Theory was proposed in 1997 as a comprehensive irony theory, and its validity and superiority have been shown as a theory representing irony research. We selected ironic sentences for which the Implicit Display Theory holds from a large-scale ironic corpus, and performed two-class classification using the deep learning model to evaluate the application of implicit display theory to natural language processing.
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