Publication | Closed Access
Upper Bound on Pattern Storage in Feedforward Networks
10
Citations
28
References
2007
Year
Mathematical ProgrammingEngineeringMachine LearningNetwork AnalysisRecurrent Neural NetworkData SciencePattern RecognitionApproximation TheorySupervised LearningInformation TheoryConjugate GradientComputational Learning TheoryComputer ScienceMultivariate ApproximationStatistical Learning TheoryStrict Interpolation EquationsDeep LearningUpper BoundAlgorithmic Information TheoryComputational Neuroscience
Starting from the strict interpolation equations for multivariate polynomials, an upper bound is developed for the number of patterns that can be memorized by a nonlinear feedforward network. A straightforward proof by contradiction is presented for the upper bound. It is shown that the hidden activations do not have to be analytic. Networks, trained by conjugate gradient, are used to demonstrate the tightness of the bound for random patterns. Based upon the upper bound, small multilayer perceptron models are successfully demonstrated for large support vector machines.
| Year | Citations | |
|---|---|---|
Page 1
Page 1