AI RESEARCH

When Identity Skews Debate: Anonymization for Bias-Reduced Multi-Agent Reasoning

arXiv CS.AI

ArXi:2510.07517v5 Announce Type: replace Multi-agent debate (MAD) aims to improve large language model (LLM) reasoning by letting multiple agents exchange answers and then aggregate their opinions. Yet recent studies reveal that agents are not neutral: they are prone to identity-driven sycophancy and self-bias, uncritically adopting a peer's view or stubbornly adhering to their own prior output, undermining the reliability of debate. In this work, we present the first principled framework that joins sycophancy and self-bias to mitigate and quantify identity bias in.