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Machine learning in spectral domain

Computer Science

Machine learning in spectral domain

L. Giambagli, L. Buffoni, et al.

This innovative research by Lorenzo Giambagli, Lorenzo Buffoni, Timoteo Carletti, Walter Nocentini, and Duccio Fanelli introduces a unique machine learning method that leverages reciprocal space for performance enhancement. By modifying eigenvalues while keeping eigenvectors static, this approach surpasses conventional techniques, making it adaptable across various frameworks, including reservoir computing.... show more
Abstract
Deep neural networks are usually trained in the space of the nodes, by adjusting the weights of existing links via suitable optimization protocols. We here propose a radically new approach which anchors the learning process to reciprocal space. Specifically, the training acts on the spectral domain and seeks to modify the eigenvalues and eigenvectors of transfer operators in direct space. The proposed method is ductile and can be tailored to return either linear or non-linear classifiers. Adjusting the eigenvalues, when freezing the eigenvectors entries, yields performances that are superior to those attained with standard methods restricted to operate with an identical number of free parameters. To recover a feed-forward architecture in direct space, we have postulated a nested indentation of the eigenvectors. Different non-orthogonal basis could be employed to export the spectral learning to other frameworks, as e.g. reservoir computing.
Publisher
Nature Communications
Published On
Feb 26, 2021
Authors
Lorenzo Giambagli, Lorenzo Buffoni, Timoteo Carletti, Walter Nocentini, Duccio Fanelli
Tags
machine learning
reciprocal space
eigenvalues
eigenvectors
transfer operators
reservoir computing
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