RoPoLL applies the geometric median to aggregate scores from LLM judge panels, yielding finite-sample error bounds and empirical robustness against biased contamination up to 50% rates.
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RoPoLL: Robust Panel of LLM Judges
RoPoLL applies the geometric median to aggregate scores from LLM judge panels, yielding finite-sample error bounds and empirical robustness against biased contamination up to 50% rates.