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Sample Efficient Learning of Predictors that Complement Humans

About

One of the goals of learning algorithms is to complement and reduce the burden on human decision makers. The expert deferral setting wherein an algorithm can either predict on its own or defer the decision to a downstream expert helps accomplish this goal. A fundamental aspect of this setting is the need to learn complementary predictors that improve on the human's weaknesses rather than learning predictors optimized for average error. In this work, we provide the first theoretical analysis of the benefit of learning complementary predictors in expert deferral. To enable efficiently learning such predictors, we consider a family of consistent surrogate loss functions for expert deferral and analyze their theoretical properties. Finally, we design active learning schemes that require minimal amount of data of human expert predictions in order to learn accurate deferral systems.

Mohammad-Amin Charusaie, Hussein Mozannar, David Sontag, Samira Samadi• 2022

Related benchmarks

TaskDatasetResultRank
Learning to DeferCIFAR100 (test)
Error Rate18.44
24
Airspace OpacityNIH Chest X-ray (test)
Error Rate10.21
4
Learning to DeferHateSpeech
Error8.65
4
Learning to DeferImageNet-16H
Error15.15
4
Learning to DeferCIFAR-10H (test)
Error Rate4.3
4
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