Predict Responsibly: Improving Fairness and Accuracy by Learning to Defer
Madras, David, Pitassi, Toni, Zemel, Richard
–Neural Information Processing Systems
In many machine learning applications, there are multiple decision-makers involved, both automated and human. The interaction between these agents often goes unaddressed in algorithmic development. In this work, we explore a simple version of this interaction with a two-stage framework containing an automated model and an external decision-maker. The model can choose to say PASS, and pass the decision downstream, as explored in rejection learning. We extend this concept by proposing "learning to defer", which generalizes rejection learning by considering the effect of other agents in the decision-making process.
Neural Information Processing Systems
Feb-14-2020, 17:58:28 GMT
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