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Dodgersort: Uncertainty-Aware VLM-Guided Human-in-the-Loop Pairwise Ranking

2026-03-21Unverified0· sign in to hype

Yujin Park, Haejun Chung, Ikbeom Jang

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Abstract

Pairwise comparison labeling is emerging as it yields higher inter-rater reliability than conventional classification labeling, but exhaustive comparisons require quadratic cost. We propose Dodgersort, which leverages CLIP-based hierarchical pre-ordering, a neural ranking head and probabilistic ensemble (Elo, BTL, GP), epistemic--aleatoric uncertainty decomposition, and information-theoretic pair selection. It reduces human comparisons while improving the reliability of the rankings. In visual ranking tasks in medical imaging, historical dating, and aesthetics, Dodgersort achieves a 11--16\% annotation reduction while improving inter-rater reliability. Cross-domain ablations across four datasets show that neural adaptation and ensemble uncertainty are key to this gain. In FG-NET with ground-truth ages, the framework extracts 5--20 more ranking information per comparison than baselines, yielding Pareto-optimal accuracy--efficiency trade-offs.

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