基于传播意图特征的虚假新闻检测方法综述

Review of Fake News Detection Methods Based on the Features of Propagation Intention

  • 摘要: 虚假新闻的传播会对个人、社会和国家产生巨大的负面影响,因此虚假新闻的检测始终都是研究的热点问题。虚假新闻检测实质上是一种信息分类问题,旨在验证由文本,图像和视频等多媒体信息构成的新闻的真实性。本文对虚假新闻检测问题和当前的主流方法展开了比较系统的研究,并揭示了虚假新闻的一个本质,即与报道真实事件的真实新闻不同,假新闻通常是有意为之,有特定的传播意图如误导公众等。基于这一特性,本文首先将虚假新闻的传播意图大致分为三类,并根据对应的相关特征对当前的研究方法作了分析,旨在能让读者从一个全新的角度理解虚假新闻检测领域。本文还介绍了虚假新闻检测的问题定义、基本范式、常用数据集和指标,并给出了该领域的未来的一些发展方向。

     

    Abstract: ‍ ‍The spread of fake news has a great negative impact on personal development, social stability and national security. Therefore, the detection of fake news has always been a hot issue. Fake news detection is typically a classification problem aiming at verifying the authenticity of news which is composed of multimedia contents such as texts, images and videos. This paper conducted a systematic study on fake news detection and its current mainstream methods. We pointed out an intrinsic characteristic of fake news, that is, fake news usually has specific propagation intentions, such as misleading the public, which is different from truth. Based on this characteristic, we first generally divided the propagation intentions of fake news into three categories, and analyzed the current research methods according to the corresponding relevant characteristics, aiming to enable readers to better understand this field from a new perspective. This paper also introduced the problem definition, basic paradigm, common datasets, evaluation metrics and state-of-the-art performances of fake news detection, and outlined some potential directions for future research.

     

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