东爪哇省媒体情感分析:基于词典与机器学习

Ikhwan Rustanto, Nur Aini Rakhmawati
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引用次数: 2

摘要

摘要-印度尼西亚通信和信息部报告称,2019年1月,印度尼西亚的互联网用户达到1.5亿,渗透率为56%。这标志着信息公开时代的到来;因此,社会各阶层更容易获得政府绩效信息。社会对政府工作表现的关注程度越来越高,政府得到的反馈也越来越多。大量的反馈刺激了公众情绪分析的研究。本研究比较了两种不同方法对东爪哇省政府绩效的民意分析。该研究比较了基于词典的方法和机器学习方法中的支持向量机(SVM)。本研究使用Twitter和Instagram数据集,以及报道东爪哇的在线新闻媒体网络。本研究发现,结合社交媒体和网络媒体的数据源,基于词典的方法的准确率值为57.7%;而SVM机器学习方法的准确率为44.7%。没有评估文件中的主题。使用支持向量机比较是因为它是一种广泛使用的带学习的SA方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Media Sentiment Analysis of East Java Province: Lexicon-Based vs Machine Learning
Abstrak —Indonesian Ministry of Communication and Informatics reported internet users in Indonesia reached 150 million with a penetration of 56% in January 2019. This indicates the era of information disclosure; therefore, information on government performance is more easily obtained by all levels of society. Society is becoming more sensitive to government performance, and more feedback is being given to the government. This large amount of feedback has stimulated research on public sentiment analysis. This study compares the public sentiment analysis by two different approaches to the government performance of East Java Province. The study was comparing the lexicon-based method approach and the Support Vector Machine (SVM) from the machine learning approach. This study uses Twitter and Instagram datasets, and also the online news media web that reports on East Java. This study found that by using a combined data source of social media and online media, the lexicon-based approach produced an accuracy value of 57.7%; while the SVM machine learning method approach produces an accuracy of 44.7%. without the topics in the document being assessed. The SVM comparison is used because it is a method widely used SA with learning.
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