Enhancing Fake News Classification Through DL Models: Encoder-Decoder Architecture with BLSTM for Improved Accuracy

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Date

2024

Journal Title

Journal ISSN

Volume Title

Publisher

Faculty of Engineering and Natural Science

Abstract

In today’s world, the subject of fake news is crucial. It discusses how social media and traditional media spread false stories or misinformation. This effort aims to use deep learning models to increase the accuracy of fake news classification. We investigate the utilization of bidirectional long short-term memory (BLSTM) networks and attention processes in conjunction with encoder-decoder design to boost accuracy

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Keywords

BLSTM, DL Model, fake news

Citation

Sumeyra B.P / Enhancing Fake News Classification Through DL Models: Encoder-Decoder Architecture with BLSTM for Improved Accuracy / 2024 / 7M06102 - Computer Science

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