Sentiment Analysis on Cyanide Case After 'Ice Cold' Aired with NLP Method using Naïve Bayes Algorithm

Rahmatika Hizria, Sarwadi Sarwadi, Rabiatul Adawiyah Hasibuan, Ramadhani Ritonga, Rika Rosnelly
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Abstract

Information technology is developing increasingly rapidly, and the reach of the Internet has expanded even to remote areas. The public increasingly uses social media as a source of information that discusses all aspects of people's lives. Social media has a vital role for most people, one of which is the news of the cyanide coffee case. The Cyanide Coffee case was discussed again by netizens after Netflix raised this case in a documentary film entitled Ice Cold, which made the public even more convinced of the irregularities of the case. Based on this, sentiment analysis is needed to extract comments to obtain public opinion information. The sentiment analysis aims to create a sentiment model to determine public comments on this case. Therefore, this research was conducted to find out and classify public sentiment on the Cyanide Coffee Case using the Natural Language Processing (NLP) method, which is a text preprocessing process followed by the tokenization stage. Data filtering was used using Indonesian Stopwords, and then normalization was continued using Porter Stemmer. In this study, data collection was carried out based on public comments on Ice Cold shows on the TikTok platform using TikTok Comments Scraper. The test results show that the classification using naïve Bayes obtained the results of 22 negative comments, 4052 neutral comments and 34 positive comments. The classification results of this study are 87% accuracy, 97.6% precision, 87% recall, and 91.9% F-Score.
使用奈维贝叶斯算法的 NLP 方法对《冰冷》播出后的氰化物案件进行情感分析
信息技术发展日新月异,互联网的覆盖范围甚至扩展到了偏远地区。公众越来越多地将社交媒体作为讨论人们生活方方面面的信息来源。社交媒体对大多数人来说都有着至关重要的作用,氰化咖啡事件就是其中之一。在 Netflix 在纪录片《Ice Cold》中提出此案后,氰化咖啡案再次被网民讨论,这让公众更加确信此案的违规性。在此基础上,需要通过情感分析来提取评论,从而获得舆情信息。情感分析旨在创建一个情感模型,以确定公众对此案的评论。因此,本研究使用自然语言处理(NLP)方法对公众对氰化物咖啡案的看法进行了分析和分类,这是一个文本预处理过程,然后是标记化阶段。使用印尼语停止词进行数据过滤,然后使用 Porter Stemmer 继续进行规范化处理。在本研究中,使用 TikTok Comments Scraper 对 TikTok 平台上关于《冰雪奇缘》节目的公开评论进行了数据收集。测试结果表明,使用天真贝叶斯进行分类的结果为:负面评论 22 条,中性评论 4052 条,正面评论 34 条。本研究的分类结果为:准确率 87%、精确率 97.6%、召回率 87%、F-Score 91.9%。
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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