The focus of this paper is on the neural network modelling approach that has gained increasing recognition in GIScience in recent years. The novelty about neural networks lies in their ability to model non-linear processes with few, if any, a priori assumptions about the nature of the data-generating process. The paper discusses some important issues that are central for successful application development. The scope is limited to feedforward neural networks, the leading example of neural networks. It is argued that failures in applications can usually be attributed to inadequate learning and/or inadequate complexity of the network model. Parameter estimation and a suitably chosen number of hidden units are, thus, of crucial importance for t...
The multiplicity of approximation theorems for Neural Networks do not relate to approximation of lin...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
In this article, we develop a framework for showing that neural networks can overcome the curse of d...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
AbstractIn this work, some ubiquitous neural networks are applied to model the landscape of a known ...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1992.Includes bibliographical references (leaves 144...
The majority of current applications of neural networks are concerned with problems in pattern recog...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
Neural networks provide a more flexible approximation of functions than traditional linear regressio...
When used for function approximation purposes, neural networks belong to a class of models whose par...
Neural networks are now one of the most successful learning formalisms. Neurons transform inputs (x(...
Neural networks are computing systems modelled after the biological neural network of animal brain a...
Many real-life dependencies can be reasonably accurately described by linear functions. If we want a...
Leaming in neural networks has attracted considerable interest in recent years. Our focus is on lea...
Artificial neural networks are function-approximating models that can improve themselves with experi...
The multiplicity of approximation theorems for Neural Networks do not relate to approximation of lin...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
In this article, we develop a framework for showing that neural networks can overcome the curse of d...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
AbstractIn this work, some ubiquitous neural networks are applied to model the landscape of a known ...
Thesis (Ph. D.)--University of Hawaii at Manoa, 1992.Includes bibliographical references (leaves 144...
The majority of current applications of neural networks are concerned with problems in pattern recog...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
Neural networks provide a more flexible approximation of functions than traditional linear regressio...
When used for function approximation purposes, neural networks belong to a class of models whose par...
Neural networks are now one of the most successful learning formalisms. Neurons transform inputs (x(...
Neural networks are computing systems modelled after the biological neural network of animal brain a...
Many real-life dependencies can be reasonably accurately described by linear functions. If we want a...
Leaming in neural networks has attracted considerable interest in recent years. Our focus is on lea...
Artificial neural networks are function-approximating models that can improve themselves with experi...
The multiplicity of approximation theorems for Neural Networks do not relate to approximation of lin...
An overview of neural networks, covering multilayer perceptrons, radial basis functions, constructiv...
In this article, we develop a framework for showing that neural networks can overcome the curse of d...