CHASE improves selective prediction under ambiguity by optimizing a ranking-aware selector over margins between competing temporal hypotheses, yielding up to 11% better alignment and 8.8% higher three-way accuracy than baselines on GUV-inspired tasks.
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CHASE: Competing Hypotheses for Ambiguity-Aware Selective Prediction
CHASE improves selective prediction under ambiguity by optimizing a ranking-aware selector over margins between competing temporal hypotheses, yielding up to 11% better alignment and 8.8% higher three-way accuracy than baselines on GUV-inspired tasks.