Addressing Failure Prediction by Learning Model Confidence
Corbière, Charles, THOME, Nicolas, Bar-Hen, Avner, Cord, Matthieu, Pérez, Patrick
–Neural Information Processing Systems
Assessing reliably the confidence of a deep neural net and predicting its failures is of primary importance for the practical deployment of these models. In this paper, we propose a new target criterion for model confidence, corresponding to the True Class Probability (TCP). We show how using the TCP is more suited than relying on the classic Maximum Class Probability (MCP). We provide in addition theoretical guarantees for TCP in the context of failure prediction. Since the true class is by essence unknown at test time, we propose to learn TCP criterion on the training set, introducing a specific learning scheme adapted to this context.
Neural Information Processing Systems
Mar-18-2020, 21:32:47 GMT
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