CHASE: Competing Hypotheses for Ambiguity-Aware Selective Prediction
Kartik Jhawar, Yuhao Geng, Atul N. Parikh, Lipo Wang

TL;DR
CHASE is a novel selective prediction framework that compares structured temporal hypotheses to improve decision-making under ambiguity, especially in partial observability scenarios.
Contribution
It introduces a hypothesis comparison approach for ambiguity-aware selective prediction, outperforming standard methods in accuracy and abstention metrics.
Findings
CHASE achieves up to 11.0% relative improvement in overall alignment.
It improves three-way accuracy by up to 8.8% in high ambiguity regimes.
The framework reduces overall risk by 9.9% at 90% coverage.
Abstract
Standard selective prediction methods typically estimate uncertainty from the output of a single predictive branch. While effective for general uncertainty estimation, these approaches often struggle under partial observability, where local temporal evidence can be contradictory and standard confidence scores become misleading. We introduce CHASE (Competing Hypotheses for Ambiguity-Aware Selective Prediction), a selective prediction framework that explicitly compares structured temporal explanations to determine whether to commit to a decision or abstain. Because genuine ambiguity causes the score gap between competing hypotheses to collapse, CHASE optimizes a ranking-aware selector over these hypothesis margins to globally separate safe commitments from fundamentally uncertain ones. We evaluate this framework on the problem of hidden connectivity inference, utilizing a controlled,…
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