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Adapting Sentiment Lexicons Using Contextual Semantics for Sentiment Analysis of Twitter

机译:使用上下文语义适应情绪词法对Twitter进行情绪分析

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Sentiment lexicons for sentiment analysis offer a simple, yet effective way to obtain the prior sentiment information of opinionated words in texts. However, words' sentiment orientations and strengths often change throughout various contexts in which the words appear. In this paper, we propose a lexicon adaptation approach that uses the contextual semantics of words to capture their contexts in tweet messages and update their prior sentiment orientations and/or strengths accordingly. We evaluate our approach on one state-of-the-art sentiment lexicon using three different Twitter datasets. Results show that the sentiment lexicons adapted by our approach outperform the original lexicon in accuracy and F-measure in two datasets, but give similar accuracy and slightly lower P-measure in one dataset.
机译:用于情感分析的情感词典提供了一种简单而有效的方法来获取文本中带有单词的先验情感信息。但是,单词的情感取向和强度通常会在单词出现的各种上下文中发生变化。在本文中,我们提出了一种词典适应方法,该方法使用单词的上下文语义来捕获推文消息中的上下文,并相应地更新其先前的情感取向和/或强度。我们使用三个不同的Twitter数据集在一种最新的情感词典上评估了我们的方法。结果表明,通过我们的方法改编的情感词典在两个数据集中的准确性和F量度均优于原始词典,但在一个数据集中却提供了相似的准确度和稍低的P量度。

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