CLIRSISep 24, 2024

A Survey of Stance Detection on Social Media: New Directions and Perspectives

arXiv:2409.15690v216 citationsh-index: 8
Originality Synthesis-oriented
AI Analysis

It synthesizes existing research for researchers and practitioners in natural language processing and social computing, but is incremental as a survey paper.

This paper provides a comprehensive survey of stance detection techniques on social media, reviewing traditional models and state-of-the-art methods based on large language models, and identifies gaps and future directions such as multi-modal detection and low-resource languages.

In modern digital environments, users frequently express opinions on contentious topics, providing a wealth of information on prevailing attitudes. The systematic analysis of these opinions offers valuable insights for decision-making in various sectors, including marketing and politics. As a result, stance detection has emerged as a crucial subfield within affective computing, enabling the automatic detection of user stances in social media conversations and providing a nuanced understanding of public sentiment on complex issues. Recent years have seen a surge of research interest in developing effective stance detection methods, with contributions from multiple communities, including natural language processing, web science, and social computing. This paper provides a comprehensive survey of stance detection techniques on social media, covering task definitions, datasets, approaches, and future works. We review traditional stance detection models, as well as state-of-the-art methods based on large language models, and discuss their strengths and limitations. Our survey highlights the importance of stance detection in understanding public opinion and sentiment, and identifies gaps in current research. We conclude by outlining potential future directions for stance detection on social media, including the need for more robust and generalizable models, and the importance of addressing emerging challenges such as multi-modal stance detection and stance detection in low-resource languages.

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