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Deep learning in random neural fields: Numerical experiments via neural tangent kernel.

Kaito Watanabe1, Kotaro Sakamoto2, Ryo Karakida3

  • 1Araya Inc., 1-12-32 Akasaka, Minato-ku, Tokyo 107-6024, Japan; LPIXEL Inc., 1-6-1, Otemachi, Chiyoda-ku, Tokyo, 100-0004, Japan.

Neural Networks : the Official Journal of the International Neural Network Society
|January 14, 2023
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Summary
This summary is machine-generated.

This study introduces a novel multilayer neural field model inspired by cortical networks. The model demonstrates enhanced robustness against noisy inputs and improved generalization compared to conventional deep networks.

Keywords:
Neural tangent kernelRandom neural fieldReproducing kernel Hilbert spaceSupervised learning

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Area of Science:

  • Computational neuroscience
  • Machine learning theory
  • Deep learning architectures

Background:

  • Biological neural networks in the cortex exhibit properties like receptive fields and correlated connection weights.
  • Understanding supervised learning in these complex neural fields is crucial for advancing AI.
  • Recent machine learning theory (neural tangent kernel regime) suggests global minima exist in over-parameterized random networks.

Purpose of the Study:

  • To investigate supervised learning in a multilayer neural field model.
  • To compare the performance of this neural field model against randomly connected deep networks.
  • To analyze the robustness and generalization capabilities of the proposed neural field architecture.

Main Methods:

  • Developed a multilayer neural field model with continuously distributed receptive fields.
  • Incorporated initial connection weights that are random but spatially correlated within layers.
  • Empirically compared the model's performance against standard deep networks using supervised learning tasks.
  • Investigated model behavior through the lens of the neural tangent kernel regime.

Main Results:

  • The proposed neural field model exhibits robustness to input patterns deformed by noise.
  • The generalization ability of the multilayer neural field model is slightly superior to conventional models.
  • Numerical analysis confirmed that global minima exist within small neighborhoods for these neural fields, aligning with neural tangent kernel theory.

Conclusions:

  • The structured, correlated nature of neural fields offers advantages over purely random connections in deep networks.
  • The developed neural field model provides a promising direction for more robust and generalizable AI systems.
  • Further research into biologically inspired neural field architectures can yield significant advancements in machine learning.