LGMLFeb 19

When More Experts Hurt: Underfitting in Multi-Expert Learning to Defer

arXiv:2602.17144v11 citations
Originality Highly original
AI Analysis

This addresses a fundamental challenge in multi-expert AI systems for improved decision-making, though it is incremental as it builds on existing L2D frameworks.

The paper tackles the problem of underfitting in multi-expert learning to defer, showing it is inherent and degrades performance, and proposes PiCCE to reduce it to a single-expert-like problem, with experiments validating improved performance.

Learning to Defer (L2D) enables a classifier to abstain from predictions and defer to an expert, and has recently been extended to multi-expert settings. In this work, we show that multi-expert L2D is fundamentally more challenging than the single-expert case. With multiple experts, the classifier's underfitting becomes inherent, which seriously degrades prediction performance, whereas in the single-expert setting it arises only under specific conditions. We theoretically reveal that this stems from an intrinsic expert identifiability issue: learning which expert to trust from a diverse pool, a problem absent in the single-expert case and renders existing underfitting remedies failed. To tackle this issue, we propose PiCCE (Pick the Confident and Correct Expert), a surrogate-based method that adaptively identifies a reliable expert based on empirical evidence. PiCCE effectively reduces multi-expert L2D to a single-expert-like learning problem, thereby resolving multi expert underfitting. We further prove its statistical consistency and ability to recover class probabilities and expert accuracies. Extensive experiments across diverse settings, including real-world expert scenarios, validate our theoretical results and demonstrate improved performance.

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