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Enhancing General Sentiment Lexicons for Domain-Specific Use

机译:增强域特定使用的一般情绪词汇

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Lexicon based methods for sentiment analysis rely on high quality polarity lexicons. In recent years, automatic methods for inducing lexicons have increased the viability of lexicon based methods for polarity classification. SentProp is a framework for inducing domain-specific polarities from word embeddings. We elaborate on SentProp by evaluating its use for enhancing DuOMan, a general-purpose lexicon, for use in the political domain. By adding only top sentiment bearing words from the vocabulary and applying small polarity shifts in the general-purpose lexicon, we increase accuracy in an in-domain classification task. The enhanced lexicon performs worse than the original lexicon in an out-domain task, showing that the words we added and the polarity shifts we applied are domain-specific and do not translate well to an out-domain setting.
机译:基于Lexicon的情绪分析方法依赖于高质量极性词典。近年来,诱导词汇的自动方法增加了基于词汇的极性分类方法的可行性。 SentProp是一种诱导来自Word Embeddings的特定于域的极性的框架。我们通过评估其用于增强Duoman,通用词典,用于政治领域的使用,详细说明SentProp。通过在通用词典中仅添加来自词汇的顶部情绪,并且应用小极性移位,我们提高了域中分类任务的准确性。增强的Lexicon在Out域任务中执行比原始Lexicon更糟糕,显示我们添加的单词和我们应用的极性移位是特定于域的,并且不符合Out域设置。

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