Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

The Low-Rank Simplicity Bias in Deep Networks

About

Modern deep neural networks are highly over-parameterized compared to the data on which they are trained, yet they often generalize remarkably well. A flurry of recent work has asked: why do deep networks not overfit to their training data? In this work, we make a series of empirical observations that investigate and extend the hypothesis that deeper networks are inductively biased to find solutions with lower effective rank embeddings. We conjecture that this bias exists because the volume of functions that maps to low effective rank embedding increases with depth. We show empirically that our claim holds true on finite width linear and non-linear models on practical learning paradigms and show that on natural data, these are often the solutions that generalize well. We then show that the simplicity bias exists at both initialization and after training and is resilient to hyper-parameters and learning methods. We further demonstrate how linear over-parameterization of deep non-linear models can be used to induce low-rank bias, improving generalization performance on CIFAR and ImageNet without changing the modeling capacity.

Minyoung Huh, Hossein Mobahi, Richard Zhang, Brian Cheung, Pulkit Agrawal, Phillip Isola• 2021

Related benchmarks

TaskDatasetResultRank
Language ModelingWikiText-2
Perplexity (PPL)21.92
841
Language ModelingWikiText-103
PPL21.7
146
Image GenerationImageNet
FID48.07
68
Zero-shot Common Sense ReasoningCommon Sense Reasoning
Zero-shot Accuracy48.4
8
Showing 4 of 4 rows

Other info

Follow for update