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Polarity classification using structure-based vector representations of text

机译:使用基于结构的文本向量表示进行极性分类

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The exploitation of structural aspects of content is becoming increasingly popular in rule-based polarity classification systems. Such systems typically weight the sentiment conveyed by text segments in accordance with these segments' roles in the structure of a text, as identified by deep linguistic processing. Conversely, state-of-the-art machine learning polarity classifiers typically aim to exploit patterns in vector representations of texts, mostly covering the occurrence of words or word groups in these texts. However, since structural aspects of content have been shown to contain valuable information as well, we propose to use structure-based features in vector representations of text. We evaluate the usefulness of our novel features on collections of English reviews in various domains. Our experimental results suggest that, even though word-based features are indispensable to good polarity classifiers, structure-based sentiment information provides valuable additional guidance that can help significantly improve the polarity classification performance of machine learning classifiers. The most informative features capture the sentiment conveyed by specific rhetorical,elements that constitute a text's core or provide crucial contextual information. (C) 2015 Elsevier B.V. All rights reserved.
机译:在基于规则的极性分类系统中,对内容结构方面的利用变得越来越普遍。这样的系统通常根据这些片段在文本结构中的作用来加权由文本片段传达的情感,如通过深度语言处理所识别的。相反,最新的机器学习极性分类器通常旨在利用文本的矢量表示中的模式,这些模式主要覆盖这些文本中单词或单词组的出现。但是,由于内容的结构方面也显示包含有价值的信息,因此我们建议在文本的矢量表示中使用基于结构的功能。我们评估各种领域的英语评论对我们新颖功能的有用性。我们的实验结果表明,即使对于良好的极性分类器而言,基于单词的功能是必不可少的,但基于结构的情感信息仍可提供有价值的附加指导,可帮助显着提高机器学习分类器的极性分类性能。最翔实的特征抓住了特定修辞元素所传达的情感,这些修辞元素构成了文本的核心或提供了关键的上下文信息。 (C)2015 Elsevier B.V.保留所有权利。

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