使用支持向量机方法对 twitter 上有关死刑的情感分析

Aidil Halim Sriani, Lia Putri Ashari Lubis, Putri Ashari, Lubis
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引用次数: 0

摘要

根据最新的 "我们是社会"(We Are Social)调查,印度尼西亚估计有 1.75 亿人使用互联网。根据这一数据,其中 1.6 亿人是使用社交媒体的互联网用户。据估计,有 1950 万印尼人使用 Twitter。这与用户在 Twitter 上发布的关于政治、音乐、健康和教育等各种话题的大量推文相吻合。死刑仍然是 Twitter 上最热门的话题之一。当法官裁定某人将因所犯罪行而被执行死刑时,这就是所谓的死刑。因此,我们利用带有线性内核特征的支持向量机技术和 Python 编程进行了情感分析,以研究公众对死刑的看法。为了提高所获结果的准确性,本研究对通过搜刮过程获得的 848 条数据进行了人工数据标注。积极的数据被归类为属于支持死刑的类别,而消极的数据被归类为属于反对死刑的类别。研究显示,训练数据和测试数据的差异为 8:2。在对包含 758 个数据点(其中 606 个用于训练,152 个用于测试)的数据集进行预处理后,我们获得了 91% 的准确率、91% 的精确率、100% 的召回率和 95% 的 f1 分数。
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 on twitter about the death penalty using the support vector machine method
It is estimated that 175 million people in Indonesia utilize the Internet, according to the most recent We Are Social survey. 160 million of them are internet users who utilize social media, according to this data. It is estimated that 19.5 million Indonesians use Twitter. This is consistent with the numerous tweets that users have posted on Twitter about a variety of topics, including politics, music, health, and education. The death penalty is still one of the most popular subjects that is addressed on Twitter. When a judge rules that someone will be executed as retribution for a crime they have committed, this is referred to as the death penalty. As a result, sentiment analysis utilizing the Support Vector Machine technique with linear kernel features and Python programming was used to study public opinions on the death sentence. To improve the accuracy of the results obtained, data labeling on 848 data that were received through the scraping process was done manually in this study. Positive data is categorized as belonging to the class that supports the death sentence, while negative data is categorized as belonging to the class that opposes it. The study that was done shows an 8:2 difference between the training and test data. After preprocessing a dataset containing 758 data points, of which 606 will be utilized for training and 152 for testing, we obtain 91% accuracy, 91% precision, 100% recall, and 95% f1-score
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