谣言
微博
计算机科学
循环神经网络
社会化媒体
人工智能
机器学习
人工神经网络
万维网
政治学
公共关系
作者
Jing Ma,Wei Gao,Prasenjit Mitra,Sejeong Kwon,Bernard J. Jansen,Kam‐Fai Wong,Meeyoung Cha
出处
期刊:International Joint Conference on Artificial Intelligence
日期:2016-07-09
卷期号:: 3818-3824
被引量:822
摘要
Microblogging platforms are an ideal place for spreading rumors and automatically debunking rumors is a crucial problem. To detect rumors, existing approaches have relied on hand-crafted features for employing machine learning algorithms that require daunting manual effort. Upon facing a dubious claim, people dispute its truthfulness by posting various cues over time, which generates long-distance dependencies of evidence. This paper presents a novel method that learns continuous representations of microblog events for identifying rumors. The proposed model is based on recurrent neural networks (RNN) for learning the hidden representations that capture the variation of contextual information of relevant posts over time. Experimental results on datasets from two real-world microblog platforms demonstrate that (1) the RNN method outperforms state-of-the-art rumor detection models that use hand-crafted features; (2) performance of the RNN-based algorithm is further improved via sophisticated recurrent units and extra hidden layers; (3) RNN-based method detects rumors more quickly and accurately than existing techniques, including the leading online rumor debunking services.
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