Literature DB >> 18267804

Functional approximation by feed-forward networks: a least-squares approach to generalization.

A R Webb1.   

Abstract

This paper considers a least-squares approach to function approximation and generalization. The particular problem addressed is one in which the training data are noiseless and the requirement is to define a mapping that approximates the data and that generalizes to situations in which data samples are corrupted by noise in the input variables. The least-squares approach produces a generalizer that has the form of a radial basis function network for a finite number of training samples. The finite sample approximation is valid provided that the perturbations due to noise on the expected operating conditions are large compared to the sample spacing in the data space. In the other extreme of small noise perturbations, a particular parametric form must be assumed for the generalizer. It is shown that better generalization will occur if the error criterion used in training the generalizer is modified by the addition of a specific regularization term. This is illustrated by an approximator that has a feedforward architecture and is applied to the problem of point-source location using the outputs of an array of receivers in the focal-plane of a lens.

Year:  1994        PMID: 18267804     DOI: 10.1109/72.286908

Source DB:  PubMed          Journal:  IEEE Trans Neural Netw        ISSN: 1045-9227


  2 in total

1.  SURPRISES IN HIGH-DIMENSIONAL RIDGELESS LEAST SQUARES INTERPOLATION.

Authors:  Trevor Hastie; Andrea Montanari; Saharon Rosset; Ryan J Tibshirani
Journal:  Ann Stat       Date:  2022-04-07       Impact factor: 4.904

2.  Lipschitzness is all you need to tame off-policy generative adversarial imitation learning.

Authors:  Lionel Blondé; Pablo Strasser; Alexandros Kalousis
Journal:  Mach Learn       Date:  2022-04-04       Impact factor: 5.414

  2 in total

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