Fake News Identification on Twitter with Hybrid CNN and RNN Models

06/29/2018
by   Oluwaseun Ajao, et al.
0

The problem associated with the propagation of fake news continues to grow at an alarming scale. This trend has generated much interest from politics to academia and industry alike. We propose a framework that detects and classifies fake news messages from Twitter posts using hybrid of convolutional neural networks and long-short term recurrent neural network models. The proposed work using this deep learning approach achieves 82 intuitively identifies relevant features associated with fake news stories without previous knowledge of the domain.

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