人工智能与假新闻:假新闻检测的概念框架

Leila Ameli, Md Shah Alam Chowdhury, Farnaz Farid, Abubakar Bello, Fariza Sabrina, Alana Maurushat
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引用次数: 0

摘要

在当今世界,网络空间在个人生活中发挥着重要作用。许多人严重依赖社交媒体来获取信息和阅读新闻。这种对网络空间,特别是社交媒体的过度依赖,为许多网络犯罪创造了巨大的空间,比如假新闻和错误信息的迅速传播。此外,生成引人注目的虚假内容的可能性也变得更容易获得。由于互联网的快速发展和人工智能(AI)技术的应用。人工智能技术是一把双刃剑。它们有能力进行积极的改进,例如检测错误信息、伪造或修改的图像和视频、识别机器人,以及比人类更好地处理和保留信息。另一方面,当被恶意行为者使用时,会对数字、物理和政治环境造成重大威胁。此外,越来越多地使用社交媒体平台,特别是Facebook和Twitter,使得公众能够迅速传播观点和信息,无论事实与否。因此,有必要进一步研究和合作,以了解如何识别和打击假新闻和虚假信息的传播,防止恶意使用人工智能技术,同时防止侵犯隐私准则。为此,在本研究中,我们提出了一个概念框架来分类和检测假新闻。该框架分为三层,主要包括特征描述和特征提取、分类和检测,最后是防御。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
AI and Fake News: A Conceptual Framework for Fake News Detection
In today's world, Cyberspace plays an essential part in an individual's life. Many people heavily depend on social media to get information and read the news. Such excessive reliance on Cyberspace, specifically on social media, has created vast room for many cybercrimes, such as the rapid spread of Fake News and misinformation. Additionally, the possibility of generating fake compelling content has become more accessible. Thanks to the rapid growth of the Internet and the adaption of Artificial Intelligence (AI) technologies. AI technologies are a two-edged sword. They are capable of positive improvements, e.g. detecting misinformation, fake or altered images and videos, identifying bots, and processing and retaining information better than humans. On the other hand, when used by malicious actors, there is a significant threat to the digital, physical, and political landscape. Additionally, the increasing use of social media platforms, specifically Facebook and Twitter, has allowed the public to spread opinions and information quickly, whether factual or not. Therefore, there is a need for further research and collaboration to understand how to identify and combat the spread of fake news and disinformation and prevent the malicious use of AI technologies whilst preventing infringement of privacy guidelines. To this end, in this study, we propose a conceptual framework to classify and detect fake news. The three-tier framework features characterisation and feature extraction, classification and detection, and the final feature is defence.
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