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Analyzing Sentiments Expressed on Twitter by UK Energy Company Consumers

机译:在英国能源公司消费者推特上进行了分析

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Automatic sentiment analysis provides an effective way to gauge public opinion on any topic of interest. However, most sentiment analysis tools require a general sentiment lexicon to automatically classify sentiments or opinion in a text. One of the challenges presented by using a general sentiment lexicon is that it is insensitive to the domain since the scores assigned to the words are fixed. As a result, while one general sentiment lexicon might perform well in one domain, the same lexicon might perform poorly in another domain. Most sentiment lexica will need to be adjusted to suit the specific domain to which it is applied. In this paper, we present results of sentiment analysis expressed on Twitter by UK energy consumers. We optimised the accuracy of the sentiment analysis results by combining functions from two sentiment lexica. We used the first lexicon to extract the sentiment-bearing terms and negative sentiments since it performed well in detecting these. We then used a second lexicon to classify the rest of the data. Experimental results show that this method improved the accuracy of the results compared to the common practice of using only one lexicon.
机译:自动情绪分析提供了一种有效的方法来衡量对任何兴趣主题的公众意见。但是,大多数情感分析工具都需要一般情绪词典,以在文本中自动对情绪或意见进行分类。使用一般情绪词典呈现的挑战之一是它对域不敏感,因为分配给单词的分数是固定的。因此,虽然一个一般情绪词典词典在一个域中可能井,但相同的词汇可能在另一个域中表现不佳。大多数情绪Lexica需要调整以适应所应用的特定域。在本文中,我们通过英国能源消费者在Twitter上表达了表达的情绪分析结果。我们通过组合来自两个情感Lexica的功能来优化情绪分析结果的准确性。我们使用第一个词典来提取致命的术语和负面情绪,因为它在检测到这些时表现良好。然后我们使用第二个词典来分类其余数据。实验结果表明,与仅使用一个词典的常见做法相比,该方法改善了结果的准确性。

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