IndoPolicyStats:公共政策问题情感分析器

M. N. Fakhruzzaman, S. Z. Jannah, Sie Wildan Gunawan, Angga Iryanto Pratama, Denise Arne Ardanty
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引用次数: 0

摘要

政府要求接种一些公共卫生疫苗。近年来,这引发了一场争论,尤其是在 Covid-19 大流行期间。本研究旨在分析公众对疫苗接种政策的两种看法。这将有助于确保政府的疫苗接种活动得到认可。所使用的数据是从 Twitter 上获取的文本数据,当时印尼正面临第二波 Covid-19 大流行。数据经过了预处理,包括去除噪声数据、折叠、词干化和标记化。然后,使用随机森林、奈夫贝叶斯和 XGBoost 对数据进行分类。结果表明,所有分类器都表现出令人满意的性能,但 XGBoost 的准确率略高。这种方法可用作自动情感分析仪,帮助政府了解公众对其政策的反馈。这需要适当的预处理和足够的数据集。
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IndoPolicyStats: sentiment analyzer for public policy issues
The government requires some vaccination for public health. This has led to a debate in recent years, especially during the Covid-19 pandemic. This research aims to analyze the two sentiments of the public regarding the vaccination policy. This would be helpful to ensure the acceptance of the government campaign about vaccination. The data used was text data obtained from Twitter when Indonesia was facing the second wave of the Covid-19 pandemic. The data were pre-processed by removing noise data, case folding, stemming, and tokenizing. Then, the data were classified with random forest, Naïve Bayes, and XGBoost. The results showed that all classifiers exhibit satisfying performance but XGBoost performs slightly better in accuracy value. This method can be deployed to be an automatic sentiment analyzer to help the government understand public feedback about its policies. This would be given by proper pre-processing and enough datasets.
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