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Building Sentiment Lexicon with Representation Learning Based on Contrast and Label of Sentiment

机译:基于情感对比和标签的表征学习构建情感词典

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Sentiment lexicon is an import part in many sentiment analysis or opinion-mining applications as its rich sentiment information plays an essential role in identifying the sentiment polarity of different text granularity. The latest work tries to automatically construct the sentiment lexicon by using the approaches of representation learning with word embedding. However, some study shows that similar word embedding may have opposite sentiment orientation, such ambiguous word embedding is difficult to distinguish them in sentiment classification model. To solve such problem, we integrate the sentiment label information of text and sentiment contrast information between target words and context word into word vector representation learning model. In this paper, the sentiment contrast information is synonyms and antonyms of the target word, which have positive LMI score with the context word and same sentiment orientation with the target word. We integrate sentiment label information of text and sentiment contrast information into Skip-gram to distinguish such ambiguous word embedding, and build the sentiment lexicon base on the improved word vector representation. The experiments demonstrated the effectiveness of our sentiment lexicon based on the improved word embedding, and its performance is better than the popular sentiment lexicons.
机译:情感词典是许多情感分析或观点挖掘应用程序中的重要组成部分,因为其丰富的情感信息在识别不同文本粒度的情感极性方面起着至关重要的作用。最新的工作试图通过使用带有词嵌入的表示学习的方法来自动构建情感词典。然而,一些研究表明,相似的词嵌入可能具有相反的情感取向,这种模棱两可的词嵌入很难在情感分类模型中将它们区分开。为了解决这个问题,我们将文本的情感标签信息和目标词与上下文词之间的情感对比信息整合到词向量表示学习模型中。本文的情感对比信息是目标词的同义词和反义词,其与上下文词的LMI得分为正,与目标词的情感取向相同。我们将文本的情感标签信息和情感对比信息集成到Skip-gram中,以区分这种模棱两可的单词嵌入,并在改进的单词矢量表示的基础上构建情感词典。实验证明了基于改进词嵌入的情感词典的有效性,其性能优于流行的情感词典。

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