Joko Ade Nursiyono, Q. Huda
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摘要

随着技术和信息的进步,个人数据保护的主要防御和安全方面变得非常重要。保护个人数据是一项人权,必须受到国家的保护。数据数字化是信息化发展的要求和挑战。个人数据保护工作基本通过法律确定性工具进行,以法规规范制度的形式进行,以实现保护网络犯罪的强大制度。印度尼西亚的法律体系中已经存在各种各样的规定。尽管如此,印尼人的个人数据泄露事件仍时有发生。本研究的目的是描述印度尼西亚的个人数据保护状况,并分析在2021年7月1日至2022年9月29日期间在Twitter上发现的数据泄露案例。该研究采用了推特推文抓取技术,并根据积极、消极和消极的情绪对网民的反应进行了分类。中性的。wordcloud通过找出网民经常讨论的关于个人数据保护的话题来分析每种情绪。此外,通过查看机器学习分类算法(即朴素贝叶斯和随机森林)的准确性,继续进行分类评估。研究结果表明,在2021年7月1日至2022年9月29日期间,公众对保护个人资料的反应仍然是负面的。这意味着随着各种数据泄露事件的发生,印尼的数据保护系统仍然不够有效。从准确率值来看,朴素贝叶斯算法非常擅长根据tweet的情绪对tweet进行分类,与随机森林算法相比,准确率达到99.84%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ANALISIS SENTIMEN TWITTER TERHADAP PERLINDUNGAN DATA PRIBADI DENGAN PENDEKATAN MACHINE LEARNING
As technology and information advances, the main defense and security aspects in the protection of personal data become very important. Protection of personal data is a human right that must be protected by the state. Data digitization is a demand and challenge in the advancement of information. Efforts in protecting personal data are basically carried out through legal certainty instruments in the form of regulations that regulate a system in order to realize a strong system in protecting cyber crime. Various regulations already exist in the legal system in Indonesia. Nevertheless, there are still cases of personal data leakage among Indonesians. The purpose of this study is to describe the condition of personal data protection in Indonesia and analyze cases of data leaks detected in Twitter tweets in the period July 1, 2021 to September 29, 2022. The study was conducted by using Twitter tweet scrapping techniques and classifying netizen responses based on positive, negative, and negative sentiments. neutral. Each sentiment is analyzed with wordcloud by finding what topics are often discussed by netizens on the protection of personal data. Furthermore, the classification evaluation is continued by looking at the accuracy of the machine learning classification algorithm, namely naive bayes and random forest. The results of the study stated that in the period from July 1, 2021 to September 29, 2022, the public's response to the protection of personal data was still negative. Which means that the data protection system in Indonesia is still not effective with the occurrence of various cases of data leakage. Based on the accuracy value, the Naive Bayes algorithm is very good at classifying tweets based on their sentiments, which is 99.84% compared to the random forest algorithm.
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