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Lexicon-based Twitter sentiment analysis for vote share prediction using emoji and N-gram features

机译:基于Lexicon的推特情绪分析,用于使用Emoji和N-Gram特征的投票份额预测

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Recently, Twitter sentiment analysis (TSA) has been successfully employed to monitor and forecast elections in many studies. However, most of the existing studies rely on extracting sentiments from explicit textual features. Moreover, only few studies have included non-textual features such as emojis for election forecasts. In this study, we incorporated N-gram features to predict vote shares of 2017 Uttar Pradesh (UP) legislative elections. Also, sentiment distribution of tweets containing emojis was significantly different from tweets without emojis. Therefore, emoji sentiments were detected and incorporated to predict the vote shares. We collected more than 0.3 million tweets, wherein geo-tagging was applied on search keywords that were not exclusive to elections. We employed seven lexicons for labelling tweets and compared two methods to reduce prediction error: sentiment magnitude-based criteria and polarity of tweets. Results show that proposed method of incorporating N-gram features and emoji sentiments significantly decreases prediction error.
机译:最近,推特情绪分析(TSA)已成功用于监测许多研究中的选举。然而,大多数现有研究依赖于从明确的文本特征中提取情绪。此外,只有很少的研究包括非文本特征,例如Emojis进行选举预测。在本研究中,我们纳入了n-gram功能,以预测2017年北方邦(UP)立法选举的投票股。此外,含有Emojis的发布的情绪分布与没有表情歌剧的推文显着不同。因此,检测到表情符号情绪并注册成预测投票股。我们收集了超过0.3百万多条推文,其中地理标记应用于不包括选举的搜索关键字。我们雇用了七个词典用于标记推文,并比较了两种方法来减少预测误差:情绪基于幅度的标准和推文的极性。结果表明,结合N-GRAM特征和表情群情绪的提出方法显着降低了预测误差。

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