Automatic Content Analysis Systems: Detecting Disinformation in Social Networks

Qeios Pub Date : 2024-05-20 DOI:10.32388/tyb6ze
Roman Romanchuk, Victoria Vysotska
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引用次数: 0

Abstract

In the 21st century, the rapid rise of disinformation and propaganda has become a significant global issue, undermining democratic processes and socio-political institutions. Disinformation, defined as intentionally false or misleading information, aims to manipulate public opinion and cause economic harm. This paper explores the use of computational linguistics and machine learning methods to detect disinformation. Techniques such as text preprocessing, feature extraction, and classification algorithms (e.g., SVM, naive Bayes) are adapted for identifying fake news. Recent studies demonstrate the effectiveness of these methods in social media and news platforms, highlighting the importance of advanced models like GPT-4 in improving detection accuracy and combating the spread of disinformation.
自动内容分析系统:检测社交网络中的虚假信息
在 21 世纪,虚假信息和宣传的迅速崛起已成为一个重大的全球性问题,破坏了民主进程和社会政治体制。虚假信息被定义为故意虚假或误导性信息,旨在操纵公众舆论并造成经济损失。本文探讨了如何利用计算语言学和机器学习方法来检测虚假信息。文本预处理、特征提取和分类算法(如 SVM、天真贝叶斯)等技术适用于识别假新闻。最近的研究证明了这些方法在社交媒体和新闻平台中的有效性,突出了 GPT-4 等先进模型在提高检测准确性和打击虚假信息传播方面的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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