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Abstract
Machine learning (ML) systems are increasingly deployed in high-stakes
domains where reliability is paramount. This thesis investigates how
uncertainty estimation can enhance the safety and trustworthiness of ML,
focusing on selective prediction -- where models abstain when confidence is
low.
We first show that a model's training trajectory contains rich uncertainty
signals that can be exploited without altering its architecture or loss. By
ensembling predictions from intermediate checkpoints, we propose a lightweight,
post-hoc abstention method that works across tasks, avoids the cost of deep
ensembles, and achieves state-of-the-art selective prediction performance.
Crucially, this approach is fully compatible with differential privacy (DP),
allowing us to study how privacy noise affects uncertainty quality. We find
that while many methods degrade under DP, our trajectory-based approach remains
robust, and we introduce a framework for isolating the privacy-uncertainty
trade-off. Next, we then develop a finite-sample decomposition of the selective
classification gap -- the deviation from the oracle accuracy-coverage curve --
identifying five interpretable error sources and clarifying which interventions
can close the gap. This explains why calibration alone cannot fix ranking
errors, motivating methods that improve uncertainty ordering. Finally, we show
that uncertainty signals can be adversarially manipulated to hide errors or
deny service while maintaining high accuracy, and we design defenses combining
calibration audits with verifiable inference.
Together, these contributions advance reliable ML by improving, evaluating,
and safeguarding uncertainty estimation, enabling models that not only make
accurate predictions -- but also know when to say "I do not know".