利用 RapidMiner 软件的 KNN 对《综合法律卫生法案》的情感分析数据进行可视化分析

Tupari Tupari, Syaukani Abdullah, Chairani Chairani
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引用次数: 0

摘要

政府决定讨论有关健康的 RUU 综合法已成为社会上的争议话题,尤其是在 Twitter 社交媒体平台的用户中。用户通过 Twitter 上的推文表达他们对 RUU Omnibus 法的立场观点。面对用户的各种评论,有必要对其进行分类,并将其可视化为有用的信息,说明用户对《健康条例》的积极和消极情绪。这对于了解公众对这一政策的反应至关重要。我们使用 RapidMiner 软件从 Twitter 用户那里收集了共计 2406 条情感数据。在使用 K-Nearest Neighbors(KNN)算法分析数据之前,对数据进行了预处理。经过预处理后,得到了 2.406 个数据点,然后将其分为 1.684 条测试推文和 722 条训练推文。然后使用 RapidMiner 软件中执行的 KNN 算法模型对数据进行处理。数据处理的结果以表格、图表和文字云的形式呈现,这与提供清晰易懂的有关健康的 RUU 的可视化研究目标相一致。这有助于没有技术背景的利益相关者理解所表达的含义和情感。研究结果表明,K-Nearest Neighbors(KNN)测试的准确率很高,达到 84.58%。这表明,基于所使用的数据及其有效可视化的能力,KNN 模型在分析 Twitter 用户对《卫生总括法》的意见方面非常成功。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Visualisasi Data Analisa Sentimen RUU Omnibus Law Kesehatan Menggunakan KNN dengan Software RapidMiner
The government's decision to discuss the RUU Omnibus law on health has become a controversial topic in society, especially among users of the Twitter social media platform. Users express their opinions regarding their stance on the RUU Omnibus law through tweets on Twitter. With diverse comments from users, it is essential to classify and visualize them into useful information about the positive and negative sentiments towards the RUU on health. This is crucial to understand the public's response to this policy. A total of 2406 sentiment data from Twitter users were collected using the RapidMiner software. Before analyzing the data using the K-Nearest Neighbors (KNN) algorithm, data preprocessing was carried out. After preprocessing, 2.406 data points were obtained, which were then divided into 1.684 tweets for testing and 722 tweets for training. The data was then processed using the KNN algorithm model executed in the RapidMiner software. The results of the data processing were presented in the form of tables, graphs, and word clouds, aligning with the research objective of providing clear and easily understandable visualizations about the RUU on health. This facilitates understanding for stakeholders without technical backgrounds to grasp the meaning and sentiments expressed. The research results indicate that the testing of K-Nearest Neighbors (KNN) yielded a high accuracy value, making it well-visualized at 84.58%. This indicates that the KNN model is highly successful in analyzing Twitter users' opinions on the Health Omnibus Law based on the data used and its ability to visualize effectively
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