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Contextual stance classification of opinions: A step towards enthymeme reconstruction in online reviews

机译:意见的上下文立场分类:迈向在线评论中的脑脑重建一步

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Enthymemes, that are arguments with missing premises, are common in natural language text. They pose a challenge for the field of argument mining, which aims to extract arguments from such text. If we can detect whether a premise is missing in an argument, then we can either fill the missing premise from similar/related arguments, or discard such enthymemes altogether and focus on complete arguments. In this paper, we draw a connection between explicit vs. implicit opinion classification in reviews, and detecting arguments from enthymemes. For this purpose, we train a binary classifier to detect explicit vs. implicit opinions using a manually labelled dataset. Experimental results show that the proposed method can discriminate explicit opinions from implicit ones, thereby providing encouraging first step towards enthymeme detection in natural language texts.
机译:血液影响是丢失的房屋的争论,在自然语言文本中很常见。它们对参数挖掘领域构成了挑战,旨在从这些文本中提取参数。如果我们可以检测参数中缺少前提,那么我们可以从类似/相关参数中填充丢失的前提,或者完全丢弃此类血统并侧重于完整的参数。在本文中,我们在评论中绘制了显式与隐性意见分类之间的联系,并检测了诱导的论据。为此目的,我们使用手动标记的数据集训练二进制分类器来检测显式与隐式观点。实验结果表明,该方法可以区分隐含的明确意见,从而提供令人鼓舞的第一步,迈向自然语言文本中的肠道内测量。

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