使用Lexicon方法实现情感检测的文本挖掘(案例研究:关于Covid-19的推文)

A. Aribowo, S. Khomsah
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引用次数: 12

摘要

有关Covid-19的信息和新闻收到了包括推特用户在内的社交媒体用户的各种回应。网民意见的不时变化值得分析,尤其是这些意见中所包含的民意和情绪的模式。情绪和情绪状况可以说明公众对印度尼西亚Covid-19大流行的反应。这项研究有两个目标,首先是揭示在印度尼西亚Covid-19大流行期间出现的公众情绪类型。其次,揭示每个情感类中出现最频繁的话题或单词。有七种情绪需要检测,即愤怒、恐惧、厌恶、悲伤、惊讶、喜悦和信任。使用的数据集是印尼语的推文,这些推文是从2020年4月到8月下载的。情感特征提取的方法是基于EmoLex词典的基于词典的方法。获得的结果是数据集中与Covid-19大流行相关的公众情绪状况的月度图表。
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Implementation Of Text Mining For Emotion Detection Using The Lexicon Method (Case Study: Tweets About Covid-19)
Information and news about Covid-19 received various responses from social media users, including Twitter users. Changes in netizen opinion from time to time are interesting to analyze, especially about the patterns of public sentiment and emotions contained in these opinions. Sentiment and emotional conditions can illustrate the public's response to the Covid-19 pandemic in Indonesia. This research has two objectives, first to reveal the types of public emotions that emerged during the Covid-19 pandemic in Indonesia. Second, reveal the topics or words that appear most frequently in each emotion class. There are seven types of emotions to be detected, namely anger, fear, disgust, sadness, surprise, joy, and trust. The dataset used is Indonesian-language tweets, which were downloaded from April to August 2020. The method used for the extraction of emotional features is the lexicon-based method using the EmoLex dictionary. The result obtained is a monthly graph of public emotional conditions related to the Covid-19 pandemic in the dataset.
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发文量
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审稿时长
24 weeks
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