deap - Fake:基于知识图谱的假新闻检测方法

Mohit Mayank, Shakshi Sharma, Rajesh Sharma
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引用次数: 26

摘要

最近一段时间,社交媒体平台上的假新闻引起了很多关注,主要是与政治(2016年美国总统选举)和医疗保健(2019冠状病毒病期间的信息大流行)有关的事件。人们提出了各种检测假新闻的方法。这些方法包括利用与网络分析、自然语言处理(NLP)和图神经网络(gnn)相关的技术。在这项工作中,我们提出了deap - FAKe,一个知识图谱假新闻检测框架,用于识别假新闻。我们的方法结合了自然语言处理(NLP)和张量分解模型,分别对新闻内容进行编码和嵌入知识图(KG)实体。这些编码的多样性为我们的检测器提供了互补的优势。我们使用两个公开可用的数据集来评估我们的框架,其中包含来自政治、商业、技术和医疗保健等领域的文章。作为数据集预处理的一部分,我们还消除了可能影响模型性能的偏见,例如文章的来源。deap - fake在两个数据集上的f1得分分别为88%和78%,分别提高了~ 21%和~3%,表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
DEAP-FAKED: Knowledge Graph based Approach for Fake News Detection
Fake News on social media platforms has attracted a lot of attention in recent times, primarily for events related to politics (2016 US Presidential elections), and healthcare (infodemic during COVID-19), to name a few. Various methods have been proposed for detecting Fake News. The approaches span from exploiting techniques related to network analysis, Natural Language Processing (NLP), and the usage of Graph Neural Networks (GNNs). In this work, we propose DEAP-FAKED, a knowleDgE grAPh FAKe nEws Detection framework for identifying Fake News. Our approach combines natural language processing (NLP) and tensor decomposition model to encode news content and embed Knowledge Graph (KG) entities, respectively. A variety of these encodings provides a complementary advantage to our detector. We evaluate our framework using two publicly available datasets containing articles from domains such as politics, business, technology, and healthcare. As part of dataset pre-processing, we also remove the bias, such as the source of the articles, which could impact the performance of the models. DEAP-FAKED obtains an F1-score of 88% and 78% for the two datasets, which is an improvement of ~21 %, and ~3%, respectively, which shows the effectiveness of the approach.
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