A Hybrid Model for Effective Fake News Detection with a Novel COVID-19 Dataset
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Date
2021
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CITEPRESS
Abstract
Due to the increasing number of users in social media, news articles can be quickly published or share among
users without knowing its credibility and authenticity. Fast spreading of fake news articles using different
social media platforms can create inestimable harm to society. These actions could seriously jeopardize the
reliability of news media platforms. So it is imperative to prevent such fraudulent activities to foster the
credibility of such social media platforms. An efficient automated tool is a primary necessity to detect such
misleading articles. Considering the issues mentioned earlier, in this paper, we propose a hybrid model using
multiple branches of the convolutional neural network (CNN) with Long Short Term Memory (LSTM) layers
with different kernel sizes and filters. To make our model deep, which consists of three dense layers to extract
more powerful features automatically. In this research, we have created a dataset (FN-COV) collecting 69976
fake and real news articles during the pandemic of COVID-19 with tags like social-distancing, covid19, and
quarantine. We have validated the performance of our proposed model with one more real-time fake news
dataset: PHEME. The capability of combined kernels and layers of our C-LSTM network is lucrative towards
both the datasets. With our proposed model, we achieved an accuracy of 91.88% with PHEME, which is
higher as compared to existing models and 98.62% with FN-COV dataset.
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Keywords
Computer Science, Fake News, Social Media, Machine Learning, Word embedding