LGCVMEMLOct 18, 2021

Learning Optimal Conformal Classifiers

arXiv:2110.09192v3126 citations
Originality Incremental advance
AI Analysis

This work addresses the need for reliable uncertainty in high-stake AI applications like medical diagnosis, offering an incremental improvement over existing conformal prediction methods.

The paper tackles the problem of unreliable uncertainty estimates in deep learning classifiers for safe deployment by integrating conformal prediction into training, resulting in reduced average confidence set size and the ability to shape confidence sets while retaining formal guarantees.

Modern deep learning based classifiers show very high accuracy on test data but this does not provide sufficient guarantees for safe deployment, especially in high-stake AI applications such as medical diagnosis. Usually, predictions are obtained without a reliable uncertainty estimate or a formal guarantee. Conformal prediction (CP) addresses these issues by using the classifier's predictions, e.g., its probability estimates, to predict confidence sets containing the true class with a user-specified probability. However, using CP as a separate processing step after training prevents the underlying model from adapting to the prediction of confidence sets. Thus, this paper explores strategies to differentiate through CP during training with the goal of training model with the conformal wrapper end-to-end. In our approach, conformal training (ConfTr), we specifically "simulate" conformalization on mini-batches during training. Compared to standard training, ConfTr reduces the average confidence set size (inefficiency) of state-of-the-art CP methods applied after training. Moreover, it allows to "shape" the confidence sets predicted at test time, which is difficult for standard CP. On experiments with several datasets, we show ConfTr can influence how inefficiency is distributed across classes, or guide the composition of confidence sets in terms of the included classes, while retaining the guarantees offered by CP.

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