Confident Multiple Choice Learning
This work addresses the problem of improving ensemble reliability for deep learning practitioners, but it is incremental as it builds upon existing multiple choice learning methods.
The paper tackled the overconfidence issue in multiple choice learning ensembles for deep neural networks by proposing Confident Multiple Choice Learning (CMCL), which achieved 14.05% and 6.60% relative reductions in top-1 error rates on CIFAR and SVHN image classification tasks compared to independent ensembles.
Ensemble methods are arguably the most trustworthy techniques for boosting the performance of machine learning models. Popular independent ensembles (IE) relying on naive averaging/voting scheme have been of typical choice for most applications involving deep neural networks, but they do not consider advanced collaboration among ensemble models. In this paper, we propose new ensemble methods specialized for deep neural networks, called confident multiple choice learning (CMCL): it is a variant of multiple choice learning (MCL) via addressing its overconfidence issue.In particular, the proposed major components of CMCL beyond the original MCL scheme are (i) new loss, i.e., confident oracle loss, (ii) new architecture, i.e., feature sharing and (iii) new training method, i.e., stochastic labeling. We demonstrate the effect of CMCL via experiments on the image classification on CIFAR and SVHN, and the foreground-background segmentation on the iCoseg. In particular, CMCL using 5 residual networks provides 14.05% and 6.60% relative reductions in the top-1 error rates from the corresponding IE scheme for the classification task on CIFAR and SVHN, respectively.