DeHiDe: Deep Learning-based Hybrid Model to Detect Fake News using
Blockchain
- URL: http://arxiv.org/abs/2010.08765v1
- Date: Sat, 17 Oct 2020 11:11:10 GMT
- Title: DeHiDe: Deep Learning-based Hybrid Model to Detect Fake News using
Blockchain
- Authors: Prashansa Agrawal, Parwat Singh Anjana, and Sathya Peri
- Abstract summary: This paper proposes a novel hybrid model DeHiDe: Deep Learning-based Hybrid Model to Detect Fake News using.
The DeHiDe is a blockchain-based framework for legitimate news sharing by filtering out the fake news.
It combines the benefit of blockchain with an intelligent deep learning model to reinforce robustness and accuracy in combating fake news's hurdle.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The surge in the spread of misleading information, lies, propaganda, and
false facts, frequently known as fake news, raised questions concerning social
media's influence in today's fast-moving democratic society. The widespread and
rapid dissemination of fake news cost us in many ways. For example, individual
or societal costs by hampering elections integrity, significant economic losses
by impacting stock markets, or increases the risk to national security. It is
challenging to overcome the spreading of fake news problems in traditional
centralized systems. However, Blockchain-- a distributed decentralized
technology that ensures data provenance, authenticity, and traceability by
providing a transparent, immutable, and verifiable transaction records can help
in detecting and contending fake news. This paper proposes a novel hybrid model
DeHiDe: Deep Learning-based Hybrid Model to Detect Fake News using Blockchain.
The DeHiDe is a blockchain-based framework for legitimate news sharing by
filtering out the fake news. It combines the benefit of blockchain with an
intelligent deep learning model to reinforce robustness and accuracy in
combating fake news's hurdle. It also compares the proposed method to existing
state-of-the-art methods. The DeHiDe is expected to outperform state-of-the-art
approaches in terms of services, features, and performance.
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