Skip to yearly menu bar Skip to main content


Poster
in
Workshop: Workshop on Advancing Neural Network Training (WANT): Computational Efficiency, Scalability, and Resource Optimization

Something for (almost) nothing: improving deep ensemble calibration using unlabeled data

Konstantinos Pitas · Julyan Arbel


Abstract:

We present a method to improve the calibration of deep ensembles in the small training data regime in the presence of unlabeled data. Our approach is extremely simple to implement: given an unlabeled set, for each unlabeled data point, we simply fit a different randomly selected label with each ensemble member. We provide a theoretical analysis based on a PAC-Bayes bound which guarantees that if we fit such a labeling on unlabeled data, and the true labels on the training data, we obtain low negative log-likelihood and high ensemble diversity on testing samples. Crucially, each ensemble member can be trained independently from the rest (apart from the final validation/test step) making a parallel or distributed implementation extremely easy.

Chat is not available.