AIBullisharXiv – CS AI · 15h ago7/10
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Self-signals Driven Multi-LLM Debate for Efficient and Accurate Reasoning
Researchers introduce Self-Signals Driven Multi-LLM Debate (SID), a method that leverages internal model signals like token logits and attention mechanisms to improve multi-agent LLM reasoning while reducing computational overhead. The approach enables high-confidence models to exit early and compresses redundant debate content, achieving better accuracy with lower token consumption than existing multi-LLM debate techniques.