1673-159X

CN 51-1686/N

基于在线社交网络的虚假新闻检测方法综述

A Survey on Fake News Detection Based on Online Social Networks

  • 摘要: 在线社交网络承载着人们日益增长的社会交流需求,是现代重要的信息共享途径。随着社交网络的普及,在线社交网络也逐渐成为了虚假新闻滋生的温床。虚假新闻的危害程度之深、范围之广,使得虚假新闻检测成为自然语言处理领域的热点研究问题之一。文章首先介绍了虚假新闻的产生背景、检测意义、相关概念及问题描述,其次,在数据收集和特征处理过程的基础上,依据特征与新闻内容之间的关系,围绕基于内部特征和基于外部特征的虚假新闻检测方法进行综述梳理,最后,阐述了虚假新闻检测任务仍然面临的一系列研究挑战,并对未来的研究方向进行了系统性的展望。

     

    Abstract: Online social networks have become increasingly popular as a means of social communication and sharing information in the digital era. The growing demand for social interaction has resulted in the spread of fake news on social media platforms. The depth and wide scope of the harm of fake news have made its detection one of the hot research topics in natural language processing. This paper first introduces the background, significance, related terms, and problem description of fake news detection. It then explains the process of data collection and feature extraction. Considering the relationship between features and news content, this paper reviews and categorizes fake news detection methods based on internal and external features. Finally, this paper highlights the research challenges that still exist in fake news detection and presents a systematic outlook on future research directions.

     

/

返回文章
返回