Consistent Estimators for Learning to Defer to an Expert
About
Learning algorithms are often used in conjunction with expert decision makers in practical scenarios, however this fact is largely ignored when designing these algorithms. In this paper we explore how to learn predictors that can either predict or choose to defer the decision to a downstream expert. Given only samples of the expert's decisions, we give a procedure based on learning a classifier and a rejector and analyze it theoretically. Our approach is based on a novel reduction to cost sensitive learning where we give a consistent surrogate loss for cost sensitive learning that generalizes the cross entropy loss. We show the effectiveness of our approach on a variety of experimental tasks.
Hussein Mozannar, David Sontag• 2020
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Learning to Defer | CIFAR-10H (test) | Coverage41.28 | 25 | |
| Learning to Defer | CIFAR100 (test) | Error Rate18.69 | 24 | |
| Classification with expert deferral | CIFAR-10 redundant expert suite (val) | System Accuracy81.5 | 21 | |
| Learning to Defer | CIFAR-10 with redundant synthetic experts | System Accuracy81.5 | 21 | |
| Learning to Defer | CIFAR-10H | System Accuracy95.3 | 18 | |
| Learning to Defer | Cifar100 Sustained High Performance (test) | AU Accuracy78.23 | 10 | |
| Learning to Defer | Cifar100 Normal Fatigue (test) | AUACC72.67 | 10 | |
| Learning to Defer | Cifar100 Rapid Fatigue (test) | AUACC66.75 | 10 | |
| Classification with Deferral | Covertype (test) | System Accuracy89.9 | 7 | |
| Learning to Defer | HateSpeech | Error8.65 | 4 |
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