Regression with Multi-Expert Deferral
Anqi Mao, Mehryar Mohri, Yutao Zhong

TL;DR
This paper introduces a novel framework for regression with multiple experts, providing new surrogate loss functions, theoretical guarantees, and algorithms that improve upon existing methods for deferral in regression tasks.
Contribution
It develops a comprehensive regression with deferral framework, including new surrogate losses, non-asymptotic consistency bounds, and algorithms applicable to multiple experts and various cost structures.
Findings
Proposed surrogate losses supported by $H$-consistency bounds.
Framework applies to multiple experts and various loss functions.
Experimental results demonstrate effectiveness of new algorithms.
Abstract
Learning to defer with multiple experts is a framework where the learner can choose to defer the prediction to several experts. While this problem has received significant attention in classification contexts, it presents unique challenges in regression due to the infinite and continuous nature of the label space. In this work, we introduce a novel framework of regression with deferral, which involves deferring the prediction to multiple experts. We present a comprehensive analysis for both the single-stage scenario, where there is simultaneous learning of predictor and deferral functions, and the two-stage scenario, which involves a pre-trained predictor with a learned deferral function. We introduce new surrogate loss functions for both scenarios and prove that they are supported by -consistency bounds. These bounds provide consistency guarantees that are stronger than Bayes…
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Taxonomy
TopicsAdvanced Statistical Methods and Models
