Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4607775 | Journal of Approximation Theory | 2010 | 16 Pages |
Accurate and parsimonious approximations for indicator functions of dd-dimensional balls and related functions are given using level sets associated with the thresholding of a linear combination of ramp sigmoid activation functions. In neural network terminology, we are using a single-hidden-layer perceptron network implementing the ramp sigmoid activation function to approximate the indicator of a ball. In order to have a relative accuracy ϵϵ, we use T=c(d2/ϵ2)T=c(d2/ϵ2) ramp sigmoids, a result comparable to that of Cheang and Barron (2000) [4], where unit step activation functions are used instead. The result is then applied to functions that have variation VfVf with respect to a class of ellipsoids. Two-hidden-layer feedforward neural nets with ramp sigmoid activation functions are used to approximate such functions. The approximation error is shown to be bounded by a constant times Vf/T112+Vfd/T214, where T1T1 is the number of nodes in the outer layer and T2T2 is the number of nodes in the inner layer of the approximation fT1,T2fT1,T2.