Dynamic Probabilistic Graphical Model for Progressive Fake News Detection on Social Media Platform

Ke Li, Bin Guo, Jiaqi Liu, Jiangtao Wang, Hao Ren, Fei Yi, Zhiwen Yu
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引用次数: 7

Abstract

Recently, fake news has been readily spread by massive amounts of users in social media, and automatic fake news detection has become necessary. The existing works need to prepare the overall data to perform detection, losing important information about the dynamic evolution of crowd opinions, and usually neglect the issue of uneven arrival of data in the real world. To address these issues, in this article, we focus on a kind of approach for fake news detection, namely progressive detection, which can be achieved by the dynamic Probabilistic Graphical Model. Based on the observation on real-world datasets, we adaptively improve the Kalman Filter to the Labeled Variable Dimension Kalman Filter (LVDKF) that learns two universal patterns from true and fake news, respectively, which can capture the temporal information of time-series data that arrive unevenly. It can take sequential data as input, distill the dynamic evolution knowledge regarding a post, and utilize crowd wisdom from users’ responses to achieve progressive detection. Then we derive the formulas using the Forward, Backward, and EM Algorithm, and we design a dynamic detection algorithm using Bayes’ theorem. Finally, we design experimental scenarios simulating progressive detection and evaluate LVDKF on two public datasets. It outperforms the baseline methods in these experimental scenarios, which indicates that it is adequate for progressive detection.
社交媒体平台上渐进式假新闻检测的动态概率图模型
最近,假新闻很容易在社交媒体上被大量用户传播,自动检测假新闻已经成为必要。现有的工作需要准备整体的数据来进行检测,失去了关于人群意见动态演变的重要信息,通常忽略了数据在现实世界中的不均匀到达问题。为了解决这些问题,在本文中,我们重点研究了一种假新闻检测方法,即渐进式检测,该方法可以通过动态概率图模型实现。基于对真实数据集的观察,我们自适应地将卡尔曼滤波器改进为标记可变维卡尔曼滤波器(LVDKF),该滤波器分别从真新闻和假新闻中学习两种通用模式,可以捕获不均匀到达的时间序列数据的时间信息。它可以以序列数据为输入,提取关于某个帖子的动态演化知识,并利用用户响应中的群体智慧实现渐进式检测。在此基础上,推导了基于前向、后向和EM算法的动态检测公式,并利用贝叶斯定理设计了动态检测算法。最后,我们设计了模拟渐进检测的实验场景,并在两个公共数据集上对LVDKF进行了评估。在这些实验场景中,它优于基线方法,这表明它适合于渐进式检测。
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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