View a PDF of the paper titled CAOS: Conformal Aggregation of One-Shot Predictors, by Maja Waldron
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Abstract:One-shot prediction enables rapid adaptation of pretrained foundation models to new tasks using only one labeled example, but lacks principled uncertainty quantification. While conformal prediction provides finite-sample coverage guarantees, standard split conformal methods are inefficient in the one-shot setting due to data splitting and reliance on a single predictor. We propose Conformal Aggregation of One-Shot Predictors (CAOS), a conformal framework that adaptively aggregates multiple one-shot predictors and uses a leave-one-out calibration scheme to fully exploit scarce labeled data. Despite violating classical exchangeability assumptions, we prove that CAOS achieves valid marginal coverage using a monotonicity-based argument. Experiments on one-shot facial landmarking and RAFT text classification tasks show that CAOS produces substantially smaller prediction sets than split conformal baselines while maintaining reliable coverage.
Submission history
From: Maja Waldron [view email]
[v1]
Thu, 8 Jan 2026 18:44:21 UTC (2,055 KB)
[v2]
Fri, 30 Jan 2026 18:49:00 UTC (2,458 KB)


