TL;DR
This paper introduces SPLAENet, a novel neural network that uses dual cross-attention, emotion analysis, and label fusion to improve stance detection accuracy in social media misinformation content.
Contribution
It proposes a new neural network architecture combining dual cross-attention, emotion-awareness, and label fusion for enhanced stance detection in misinformation detection.
Findings
Achieves 8.92% accuracy improvement on RumourEval dataset
Improves F1-score by 17.36% on RumourEval dataset
Outperforms existing methods on multiple social media datasets
Abstract
The rapid evolution of social media has generated an overwhelming volume of user-generated content, conveying implicit opinions and contributing to the spread of misinformation. The method aims to enhance the detection of stance where misinformation can polarize user opinions. Stance detection has emerged as a crucial approach to effectively analyze underlying biases in shared information and combating misinformation. This paper proposes a novel method for \textbf{S}tance \textbf{P}rediction through a \textbf{L}abel-fused dual cross-\textbf{A}ttentive \textbf{E}motion-aware neural \textbf{Net}work (SPLAENet) in misinformative social media user-generated content. The proposed method employs a dual cross-attention mechanism and a hierarchical attention network to capture inter and intra-relationships by focusing on the relevant parts of source text in the context of reply text and vice…
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Taxonomy
MethodsSoftmax · Attention Is All You Need · ALIGN
