论文标题

部分可观测时空混沌系统的无模型预测

FuDFEND: Fuzzy-domain for Multi-domain Fake News Detection

论文作者

Liang, Chaoqi, Zhang, Yu, Li, Xinyuan, Zhang, Jinyu, Yu, Yongqi

论文摘要

在互联网上,假新闻存在于各个领域(例如教育,健康)。由于不同域中的新闻具有不同的功能,因此研究人员最近使用单个域标签进行假新闻检测。这个紧急领域称为多域假新闻检测(MFND)。现有作品表明,使用单个域标签可以提高假新闻检测模型的准确性。但是,以前的工作有两个问题。首先,他们忽略了一个新闻可能具有来自不同领域的功能。单个域标签仅关注有关特定域域的新闻的特征。这可能会降低模型的性能。其次,他们的模型无法在没有域标签的情况下将域知识传输到其他数据集。在本文中,我们提出了一个新型模型Fudfend,该模型通过引入模糊推理机制来解决上述局限性。具体而言,Fudfend使用神经网络来适合模糊的推理过程,该过程构建了每个新闻项目的模糊域标签。然后,该功能提取模块使用模糊域标签来提取新闻的多域特征并获得总特征表示。 fi-nally,歧视器模块使用总功能表示形式来分解新闻项目是否为假新闻。 Weibo21上的结果表明,我们的模型比仅使用单个域标签的模型更好。此外,我们的模型将域知识更好地传输到没有域标签的thu da-taset。

On the Internet, fake news exists in various domain (e.g., education, health). Since news in different domains has different features, researchers have be-gun to use single domain label for fake news detection recently. This emerg-ing field is called multi-domain fake news detection (MFND). Existing works show that using single domain label can improve the accuracy of fake news detection model. However, there are two problems in previous works. Firstly, they ignore that a piece of news may have features from different domains. The single domain label focuses only on the features of the news on particu-lar domain. This may reduce the performance of the model. Secondly, their model cannot transfer the domain knowledge to the other dataset without domain label. In this paper, we propose a novel model, FuDFEND, which solves the limitations above by introducing the fuzzy inference mechanism. Specifically, FuDFEND utilizes a neural network to fit the fuzzy inference process which constructs a fuzzy domain label for each news item. Then, the feature extraction module uses the fuzzy domain label to extract the multi-domain features of the news and obtain the total feature representation. Fi-nally, the discriminator module uses the total feature representation to dis-criminate whether the news item is fake news. The results on the Weibo21 show that our model works better than the model using only single domain label. In addition, our model transfers domain knowledge better to Thu da-taset which has no domain label.

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