No Need for Learning to Defer? A Training Free Deferral Framework to Multiple Experts through Conformal Prediction
By: Tim Bary, Benoît Macq, Louis Petit
Potential Business Impact:
Lets computers ask for help when unsure.
AI systems often fail to deliver reliable predictions across all inputs, prompting the need for hybrid human-AI decision-making. Existing Learning to Defer (L2D) approaches address this by training deferral models, but these are sensitive to changes in expert composition and require significant retraining if experts change. We propose a training-free, model- and expert-agnostic framework for expert deferral based on conformal prediction. Our method uses the prediction set generated by a conformal predictor to identify label-specific uncertainty and selects the most discriminative expert using a segregativity criterion, measuring how well an expert distinguishes between the remaining plausible labels. Experiments on CIFAR10-H and ImageNet16-H show that our method consistently outperforms both the standalone model and the strongest expert, with accuracies attaining $99.57\pm0.10\%$ and $99.40\pm0.52\%$, while reducing expert workload by up to a factor of $11$. The method remains robust under degraded expert performance and shows a gradual performance drop in low-information settings. These results suggest a scalable, retraining-free alternative to L2D for real-world human-AI collaboration.
Similar Papers
No Need for "Learning" to Defer? A Training Free Deferral Framework to Multiple Experts through Conformal Prediction
Machine Learning (CS)
Lets computers ask humans for help when unsure.
Expert-Agnostic Learning to Defer
Machine Learning (CS)
Teaches robots to ask for help when unsure.
Learning to Defer for Causal Discovery with Imperfect Experts
Machine Learning (CS)
Learns when to trust computers or experts.