Stance Detection with BERT Embeddings for Credibility Analysis of Information on Social Media
Hema Karande, Rahee Walambe, Victor Benjamin, Ketan Kotecha, T. S., Raghu

TL;DR
This paper presents a fake news detection model using BERT embeddings that analyzes news content and stance to achieve high accuracy in identifying misinformation on social media.
Contribution
It introduces a novel approach combining stance detection with BERT embeddings for early-stage fake news identification, outperforming previous methods.
Findings
Achieved 95.32% accuracy in fake news detection.
Outperformed previous models on real-world datasets.
Demonstrated effectiveness of stance features with BERT embeddings.
Abstract
The evolution of electronic media is a mixed blessing. Due to the easy access, low cost, and faster reach of the information, people search out and devour news from online social networks. In contrast, the increasing acceptance of social media reporting leads to the spread of fake news. This is a minacious problem that causes disputes and endangers societal stability and harmony. Fake news spread has gained attention from researchers due to its vicious nature. proliferation of misinformation in all media, from the internet to cable news, paid advertising and local news outlets, has made it essential for people to identify the misinformation and sort through the facts. Researchers are trying to analyze the credibility of information and curtail false information on such platforms. Credibility is the believability of the piece of information at hand. Analyzing the credibility of fake news…
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Taxonomy
MethodsRefunds@Expedia|||How do I get a full refund from Expedia? · Attention Is All You Need · Linear Layer · Softmax · Linear Warmup With Linear Decay · Layer Normalization · WordPiece · Attention Dropout · Dropout · Weight Decay
