Selecting Optimal Experiments for Multiple Output Multilayer Perceptrons

Abstract

Where should a researcher conduct experiments to provide training data for a multilayer perceptron? This question is investigated, and a statistical method for selecting optimal experimental design points for multiple output multilayer perceptrons is introduced. Multiple class discrimination problems are examined using a framework in which the multilayer perceptron is viewed as a multivariate nonlinear regression model. Following a Bayesian formulation for the case where the variance-covariance matrix of the responses is unknown, a selection criterion is developed. This criterion is based on the volume of the joint confidence ellipsoid for the weights in a multilayer perceptron. An example is used to demonstrate the superiority of optimally selected design points over randomly chosen points, as well as points chosen in a grid pattern. Simplification of the basic criterion is offered through the use of Hadamard matrices to produce uncorrelated outputs.

Cite

Text

Belue et al. "Selecting Optimal Experiments for Multiple Output Multilayer Perceptrons." Neural Computation, 1997. doi:10.1162/NECO.1997.9.1.161

Markdown

[Belue et al. "Selecting Optimal Experiments for Multiple Output Multilayer Perceptrons." Neural Computation, 1997.](https://mlanthology.org/neco/1997/belue1997neco-selecting/) doi:10.1162/NECO.1997.9.1.161

BibTeX

@article{belue1997neco-selecting,
  title     = {{Selecting Optimal Experiments for Multiple Output Multilayer Perceptrons}},
  author    = {Belue, Lisa M. and Jr., Kenneth W. Bauer and Ruck, Dennis W.},
  journal   = {Neural Computation},
  year      = {1997},
  pages     = {161-183},
  doi       = {10.1162/NECO.1997.9.1.161},
  volume    = {9},
  url       = {https://mlanthology.org/neco/1997/belue1997neco-selecting/}
}