Fredholm integral equations for function approximation and the training of neural networks
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Abstract
We present a novel and mathematically transparent approach to function approximation
and the training of large, high-dimensional neural networks, based on the approximate
least-squares solution of associated Fredholm integral equations of the first kind
by Ritz-Galerkin discretization, Tikhonov regularization and tensor-train methods. Practical
application to supervised learning problems of regression and classification type confirm that
the resulting algorithms are competitive with state-of-the-art neural network-based methods