AI RESEARCH
Beyond Consensus: Trace-Level Synthesis in Mixture of Agents
arXiv CS.AI
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ArXi:2605.29116v1 Announce Type: new When multiple LLM agents solve the same problem, standard practice compresses each agent's reasoning into a majority vote or layered synthesis, treating agreement as the finish line. We show this is unnecessarily lossy: an LLM aggregator that reads complete reasoning traces recovers correct solutions even when agents unanimously agree, with beneficial corrections consistently outweighing harmful ones -- the \emph{aggregation paradox