Sentiment Analysis Twitter Based Lexicon and Multilayer Perceptron Algorithm

Yudi Ramdhani, Hanii Mustofa, Salman Topiq, D. Alamsyah, Sandy Setiawan, L. Susanti
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引用次数: 5

Abstract

As the COVID-19 pandemic begins, the perception of online lectures according to students needs to be researched, to find out whether students have positive or negative sentiments regarding online lectures so far. Therefore, it is necessary to conduct research on sentiment analysis about online lectures taken according to student comments via tweets on the Twitter platform. The extracted tweets data will then be analyzed using machine learning to predict student sentiment about online lectures. The multilayer perceptron algorithm is used in research because it can solve non-linear problems well and is easy to implement without complicated parameter settings. However, multilayer perceptron is a supervised learning algorithm so it requires data that has been labeled/classified. So that to label the data of online lecture tweets, lexicon-based sentiment analysis is used. A total of 2,391 Indonesian-language tweets were successfully extracted. The results of the study using lexicon-based showed that as many as 63.9% gave negative sentiments towards online lectures, and 29% gave positive sentiments while the remaining 7.1% gave neutral sentiments. Meanwhile, the prediction ability of the multilayer perceptron algorithm for tweets data in this online lecture produces an accuracy of 71%.
基于Twitter的情感分析词典和多层感知器算法
随着新冠肺炎疫情的到来,有必要调查学生对网络讲座的看法,了解到目前为止,学生对网络讲座的看法是积极的还是消极的。因此,有必要对学生在Twitter平台上的推文评论进行网络讲座的情感分析研究。然后,提取的推文数据将使用机器学习进行分析,以预测学生对在线课程的看法。由于多层感知器算法可以很好地解决非线性问题,并且易于实现,无需复杂的参数设置,因此在研究中使用多层感知器算法。然而,多层感知器是一种监督学习算法,所以它需要数据已经被标记/分类。因此,为了标记在线讲座推文的数据,使用了基于词典的情感分析。共有2391条印尼语推文被成功提取。使用基于词典的研究结果显示,多达63.9%的人对在线课程持否定态度,29%的人持积极态度,其余7.1%的人持中立态度。同时,在本次在线讲座中,多层感知器算法对tweets数据的预测能力达到了71%的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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