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One-Stage Top-$k$ Learning-to-Defer: Score-Based Surrogates with Theoretical Guarantees

One-Stage Top-$k$ Learning-to-Defer: Score-Based Surrogates with Theoretical Guarantees

来源:Arxiv_logoArxiv
英文摘要

We introduce the first one-stage Top-$k$ Learning-to-Defer framework, which unifies prediction and deferral by learning a shared score-based model that selects the $k$ most cost-effective entities-labels or experts-per input. While existing one-stage L2D methods are limited to deferring to a single expert, our approach jointly optimizes prediction and deferral across multiple entities through a single end-to-end objective. We define a cost-sensitive loss and derive a novel convex surrogate that is independent of the cardinality parameter $k$, enabling generalization across Top-$k$ regimes without retraining. Our formulation recovers the Top-1 deferral policy of prior score-based methods as a special case, and we prove that our surrogate is both Bayes-consistent and $\mathcal{H}$-consistent under mild assumptions. We further introduce an adaptive variant, Top-$k(x)$, which dynamically selects the number of consulted entities per input to balance predictive accuracy and consultation cost. Experiments on CIFAR-10 and SVHN confirm that our one-stage Top-$k$ method strictly outperforms Top-1 deferral, while Top-$k(x)$ achieves superior accuracy-cost trade-offs by tailoring allocations to input complexity.

Yannis Montreuil、Axel Carlier、Lai Xing Ng、Wei Tsang Ooi

计算技术、计算机技术

Yannis Montreuil,Axel Carlier,Lai Xing Ng,Wei Tsang Ooi.One-Stage Top-$k$ Learning-to-Defer: Score-Based Surrogates with Theoretical Guarantees[EB/OL].(2025-05-15)[2025-06-12].https://arxiv.org/abs/2505.10160.点此复制

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