On the approximation by single hidden layer feedforward neural networks with fixed weights

08/21/2017
by   Namig J. Guliyev, et al.
0

Feedforward neural networks have wide applicability in various disciplines of science due to their universal approximation property. Some authors have shown that single hidden layer feedforward neural networks (SLFNs) with fixed weights still possess the universal approximation property provided that approximated functions are univariate. But this phenomenon does not lay any restrictions on the number of neurons in the hidden layer. The more this number, the more the probability of the considered network to give precise results. In this note, we constructively prove that SLFNs with the fixed weight 1 and two neurons in the hidden layer can approximate any continuous function on a compact subset of the real line. The applicability of this result is demonstrated in various numerical examples. Finally, we show that SLFNs with fixed weights cannot approximate all continuous multivariate functions.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
01/22/2020

Approximation capability of two hidden layer feedforward neural networks with fixed weights

We algorithmically construct a two hidden layer feedforward neural netwo...
research
07/26/2019

Two-hidden-layer Feedforward Neural Networks are Universal Approximators: A Constructive Approach

It is well known that Artificial Neural Networks are universal approxima...
research
11/08/2015

A Winner-Take-All Approach to Emotional Neural Networks with Universal Approximation Property

Here, we propose a brain-inspired winner-take-all emotional neural netwo...
research
03/14/2023

Sequential three-way decisions with a single hidden layer feedforward neural network

The three-way decisions strategy has been employed to construct network ...
research
05/06/2014

Pulling back error to the hidden-node parameter technology: Single-hidden-layer feedforward network without output weight

According to conventional neural network theories, the feature of single...
research
07/30/2020

Random Vector Functional Link Networks for Function Approximation on Manifolds

The learning speed of feed-forward neural networks is notoriously slow a...
research
10/27/2003

Feedforward Neural Networks with Diffused Nonlinear Weight Functions

In this paper, feedforward neural networks are presented that have nonli...

Please sign up or login with your details

Forgot password? Click here to reset