DC-CNN: Dual-channel Convolutional Neural Networks with attention-pooling for fake news detection

被引:0
|
作者
Kun Ma
Changhao Tang
Weijuan Zhang
Benkuan Cui
Ke Ji
Zhenxiang Chen
Ajith Abraham
机构
[1] University of Jinan,Shandong Provincial Key Laboratory of Network Based Intelligent Computing
[2] Shandong College of Electronic Technology,Department of Computer and Software Engineering
[3] Scientific Network for Innovation and Research Excellence,Machine Intelligence Research Labs
来源
Applied Intelligence | 2023年 / 53卷
关键词
COVID-19; Fake news; Noisy data; Convolutional neural network;
D O I
暂无
中图分类号
学科分类号
摘要
Fake news detection mainly relies on the extraction of article content features with neural networks. However, it has brought some challenges to reduce the noisy data and redundant features, and learn the long-distance dependencies. To solve the above problems, Dual-channel Convolutional Neural Networks with Attention-pooling for Fake News Detection (abbreviated as DC-CNN) is proposed. This model benefits from Skip-Gram and Fasttext. It can effectively reduce noisy data and improve the learning ability of the model for non-derived words. A parallel dual-channel pooling layer was proposed to replace the traditional CNN pooling layer in DC-CNN. The Max-pooling layer, as one of the channels, maintains the advantages in learning local information between adjacent words. The Attention-pooling layer with multi-head attention mechanism serves as another pooling channel to enhance the learning of context semantics and global dependencies. This model benefits from the learning advantages of the two channels and solves the problem that pooling layer is easy to lose local-global feature correlation. This model is tested on two different COVID-19 fake news datasets, and the experimental results show that our model has the optimal performance in dealing with noisy data and balancing the correlation between local features and global features.
引用
收藏
页码:8354 / 8369
页数:15
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