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Test Sample Accuracy Scales with Training Sample Density in Neural Networks

15 June 2021
Xu Ji
Razvan Pascanu
Devon Hjelm
Balaji Lakshminarayanan
Andrea Vedaldi
ArXiv (abs)PDFHTML
Abstract

Intuitively, one would expect accuracy of a trained neural network's prediction on test samples to correlate with how densely the samples are surrounded by seen training samples in representation space. We find that a bound on empirical training error smoothed across linear activation regions scales inversely with training sample density in representation space. Empirically, we verify this bound is a strong predictor of the inaccuracy of the network's prediction on test samples. For unseen test sets, including those with out-of-distribution samples, ranking test samples by their local region's error bound and discarding samples with the highest bounds raises prediction accuracy by up to 20% in absolute terms for image classification datasets, on average over thresholds.

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