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A semantic similarity-based perspective of affect lexicons for sentiment analysis

机译:基于语义相似度的情感词典的情感分析

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摘要

Lexical resources are widely popular in the field of Sentiment Analysis, as they represent a resource that directly encodes sentimental knowledge. Usually sentiment lexica are used for polarity estimation through the matching of words contained in a text and their associated lexicon sentiment polarities. Nevertheless, such resources have limitations in vocabulary coverage and domain adaptation. Besides, many recent techniques exploit the concept of distributed semantics, normally through word embeddings. In this work, a semantic similarity metric is computed between text words and lexica vocabulary. Using this metric, this paper proposes a sentiment classification model that uses the semantic similarity measure in combination with embedding representations. In order to assess the effectiveness of this model, we perform an extensive evaluation. Experiments show that the proposed method can improve Sentiment Analysis performance over a strong baseline, being this improvement statistically significant. Finally, some characteristics of the proposed technique are studied, showing that the selection of lexicon words has an effect in cross-dataset performance. (C) 2018 The Authors. Published by Elsevier B.V. This is an open access article under the CC BY license.
机译:词汇资源在情感分析领域广为流行,因为它们代表直接编码情感知识的资源。通常,通过将文本中包含的单词及其关联的词典情感极性进行匹配,可以将情感词典用于极性估计。但是,此类资源在词汇覆盖和领域适应方面存在局限性。此外,许多最新技术通常通过词嵌入来利用分布式语义的概念。在这项工作中,在文本单词和词汇词汇之间计算了语义相似性度量。使用这种度量,本文提出了一种情感分类模型,该模型将语义相似性度量与嵌入表示结合使用。为了评估此模型的有效性,我们进行了广泛的评估。实验表明,所提出的方法可以在较高的基线上提高情感分析性能,这在统计上是显着的。最后,研究了所提出技术的一些特征,表明词典词的选择对跨数据集性能有影响。 (C)2018作者。由Elsevier B.V.发布。这是CC BY许可下的开放获取文章。

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