The Truth Becomes Clearer Through Debate! Multi-Agent Systems with Large Language Models Unmask Fake News
Yuhan Liu, Yuxuan Liu, Xiaoqing Zhang, Xiuying Chen, Rui Yan

TL;DR
This paper introduces TruEDebate, a multi-agent system using large language models to simulate debates for more interpretable and effective fake news detection, inspired by formal debate principles.
Contribution
The study presents a novel multi-agent debate framework with specialized agents that enhance fake news detection interpretability and accuracy using LLMs.
Findings
Improved fake news detection accuracy over baseline models
Enhanced interpretability through debate simulation
Effective role-aware reasoning with debate graphs
Abstract
In today's digital environment, the rapid propagation of fake news via social networks poses significant social challenges. Most existing detection methods either employ traditional classification models, which suffer from low interpretability and limited generalization capabilities, or craft specific prompts for large language models (LLMs) to produce explanations and results directly, failing to leverage LLMs' reasoning abilities fully. Inspired by the saying that "truth becomes clearer through debate," our study introduces a novel multi-agent system with LLMs named TruEDebate (TED) to enhance the interpretability and effectiveness of fake news detection. TED employs a rigorous debate process inspired by formal debate settings. Central to our approach are two innovative components: the DebateFlow Agents and the InsightFlow Agents. The DebateFlow Agents organize agents into two teams,…
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Taxonomy
MethodsSoftmax · Attention Is All You Need
