NOISE CORRELATION ON A LOW-DIMENSIONAL NEURAL MANIFOLD ENABLES EFFECTIVE LEARNING AT SCALE
Harvard Medical School/Howard Hughes Medical Institute
Presentation
Date TBA
Event Information
Poster Board
PS01-07AM-344
Poster
View posterAbstract
Here we introduce neural manifold noise correlation (NMNC), a credit-assignment framework that restricts perturbations to the intrinsic neural manifold. We show, both theoretically and empirically, that in trained networks the row space of the network Jacobian aligns closely with this manifold, and that manifold dimensionality increases only slowly with network size. These properties allow NMNC to estimate gradients efficiently without requiring high-dimensional perturbations.
Across a range of architectures and tasks, including convolutional networks trained on CIFAR-10 and ImageNet as well as recurrent neural networks, NMNC substantially improves learning performance and sample efficiency compared to conventional noise correlation-based methods. Furthermore, networks trained with NMNC develop internal representations that more closely resemble those observed in the primate visual system than those trained with conventional noise correlation-based methods.
Together, these results suggest a mechanistic account of how biological circuits could perform scalable credit assignment using structured neural variability, and demonstrate that biologically motivated constraints on neural activity may facilitate, rather than hinder, efficient learning at scale.
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