基于LSTM和IndoBERTweet算法的印尼语TikTok评论情感分析

Jerry Cahyo Setiawan, Kemas M. Lhaksmana, Bunyamin Bunyamin
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引用次数: 0

摘要

TikTok目前是世界上最受欢迎的应用程序,因此在谷歌Play商店和其他应用程序市场平台上获得了许多评论。这些评论是有价值的用户意见,可以进一步分析用于许多目的。从这些评论中利用有价值的分析可以手动获得,这将是耗时和昂贵的,或者使用机器学习方法自动获得。本文使用来自Twitter帖子数据的印尼语词汇,利用LSTM和BERT的衍生工具IndoBERTweet实现了后者。本研究旨在确定合适的方法来创建一个模型,该模型可以自动将TikTok的评论分为负面、中性和积极情绪。结果表明,IndoBERTweet优于其他tweet,准确率为80%,而LSTM的准确率为78%。
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Sentiment Analysis of Indonesian TikTok Review Using LSTM and IndoBERTweet Algorithm
TikTok is currently the most popular app in the world and thus gets many reviews on the Google Play Store and other app marketplace platforms. These reviews are valuable user opinions that can be analyzed further for many purposes. Harnessing valuable analyses from these reviews can be obtained manually, which will be time-consuming and costly, or automatically with machine learning methods. This paper implements the latter with LSTM and IndoBERTweet, a derivative of BERT, using Indonesian vocabulary from Twitter post data. This research aims to determine the appropriate method to create a model that can automatically classify TikTok reviews into negative, neutral, and positive sentiments. The result demonstrates that IndoBERTweet outperforms the other, with an accuracy of 80%, whereas the LSTM accuracy is at 78%.
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