Conformal Risk Minimization with Variance Reduction
Conformal prediction (CP) is a distribution-free framework for achieving probabilistic guarantees on black-box models. CP is generally applied to a model post-training. Recent research efforts, on the other hand, have focused on optimizing CP efficiency during training. We formalize this concept as...
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Zusammenfassung: | Conformal prediction (CP) is a distribution-free framework for achieving
probabilistic guarantees on black-box models. CP is generally applied to a
model post-training. Recent research efforts, on the other hand, have focused
on optimizing CP efficiency during training. We formalize this concept as the
problem of conformal risk minimization (CRM). In this direction, conformal
training (ConfTr) by Stutz et al.(2022) is a technique that seeks to minimize
the expected prediction set size of a model by simulating CP in-between
training updates. Despite its potential, we identify a strong source of sample
inefficiency in ConfTr that leads to overly noisy estimated gradients,
introducing training instability and limiting practical use. To address this
challenge, we propose variance-reduced conformal training (VR-ConfTr), a CRM
method that incorporates a variance reduction technique in the gradient
estimation of the ConfTr objective function. Through extensive experiments on
various benchmark datasets, we demonstrate that VR-ConfTr consistently achieves
faster convergence and smaller prediction sets compared to baselines. |
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DOI: | 10.48550/arxiv.2411.01696 |