使用奈维贝叶斯分类器对反男女同性恋、双性恋和变性者运动进行情感分析

Rios Dacosta, Syafriandi, D. Permana, Dina Fitria
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引用次数: 0

摘要

社交媒体在不断发展,因此所讨论的新闻也能很快为大家所知。社交媒体上讨论的新闻或话题就是反 LGBT 运动。关于反男女同性恋、双性恋和变性者运动的对话是以包含积极和消极情绪的观点形式表达的。意见通过 Twitter 传递。Twitter 是一种微博社交媒体,允许用户创建短信息并方便快捷地分享。通过 Twitter 上的意见可以了解这些意见是反对还是支持反 LGBT 运动。使用情感分析有助于了解舆论是支持还是反对反 LGBT 运动。用于进行情感分析的算法是奈夫贝叶斯分类器。本研究的目的是确定 Twitter 上反 LGBT 运动推文的情感分析。本研究使用了 Google Colaboratory 工具。使用的数据集为 3103 条推文,其中 80% 为训练数据,20% 为测试数据。本研究获得的情感分析结果显示,印尼的 Twitter 用户给出了更多正面意见。使用 Naïve Bayes 分类器算法得出的准确率为 68.75%,精确率为 99.6%,召回率为 92.8%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis about Anti-LGBT Campaign using the Naïve Bayes Classifier
Social media is growing so that the news that is discussed is also very fast to be known by everyone. The news or topic that is being discussed on social media is the anti-LGBT campaign. The conversation about the anti-LGBT campaign is expressed in the form of opinions that contain positive and negative feelings. The opinion is conveyed through Twitter. Twitter is a microblogging social media that allows users to create short messages and share them easily and quickly. Opinions on Twitter are used to see whether the opinion rejects or supports the anti-LGBT campaign. The use of sentiment analysis helps to see the opinion supports or rejects the anti-LGBT campaign. The algorithm used to perform sentiment analysis is the Naïve Bayes Classifier. The purpose of this study is to determine the sentiment analysis of anti-LGBT campaign tweets on Twitter. In this study using Google Colaboratory tools. The dataset used is 3103 tweets with 80% training data and 20% test data. The sentiment analysis results obtained in this study show taht Twitter users in Indonesia give more positive opinions. The use of the Naïve Bayes Classifier algorithm produces an accuracy of 68,75%, precision of 99,6%, and recall of 92,8%.
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