HYBRID NEURAL NETWORK FOR FAKE NEWS STANCE DETECTION
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Pulchowk Campus
Abstract
Fake news is becoming more readily available as technology advances, which sometime mislead
the readers and leads to inaccurate social opinions. Fake news may be found on the Internet, news
sources and social media platforms. The spread of low-quality news has harmed both individuals
and society. In this thesis work, we analyze three hybrid models, CNN+simple RNN, CNN+GRU
and CNN+BiLSTM in encoder decoder architecture to predict the stance between headline and
article of the news. Pre-trained GloVe word embedding is used for word to vector representation
as it can capture the inter-word semantic information. The CNN-RNN combination had been
shown efficient in deep learning applications because they can capture sequential and local features
of input data. The models were successfully trained and tested on both binary (ISOT) and
multiclass (FNC-1) fake news datasets. It is found that the CNN+ BiLSTM model had better
results than other two hybrid models in both binary and multiclass classification task for the fake
news stance detection system.
Description
Fake news is becoming more readily available as technology advances, which sometime mislead
the readers and leads to inaccurate social opinions.
Citation
MASTER OF SCIENCE IN INFORMATION AND COMMUNICATION ENGINEERING
