Intrinsic qualities of the cascade correlation algorithm make it a popular choice for many researchers wishing to utilize neural networks. Problems arise when the outputs required are highly multimodal over the input domain. The mean squared error of the approximation increases significantly as the number of modes increases. By applying ensembling and early stopping, we show that this error can be reduced by a factor of three. We also present a new technique based on subdivision that we call patchworking. When used in combination with early stopping and ensembling the mean improvement in error is over 10 in some cases
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Cascade correlation (CC) constitutes a training method for neural networks which determines the weig...
Multi-task learning (MTL) is an established method of inducing bias in neural network learning. It h...
Abstract- Intrinsic qualities of the cascade correlation algorithm make it a popular choice for many...
The constructive topology of the cascade correlation algorithm makes it a popular choice for many re...
This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation,...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
This paper is an overview of cascade-correlation neural networks which form a specific class inside ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
Engineering design often requires the optimisation of multiple objectives, and becomes significantly...
Neural network modeling typically ignores the role of knowledge in learning by starting from random ...
We discuss the weight update rule in the Cascade Correlation neural net learning algorithm. The weig...
Abstract: "Cascade-Correlation is a new architecture and supervised learning algorithm for artificia...
An experimental investigation of the cascade-correlation network (CC) is carried out in different be...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Cascade correlation (CC) constitutes a training method for neural networks which determines the weig...
Multi-task learning (MTL) is an established method of inducing bias in neural network learning. It h...
Abstract- Intrinsic qualities of the cascade correlation algorithm make it a popular choice for many...
The constructive topology of the cascade correlation algorithm makes it a popular choice for many re...
This thesis is divided into two parts: the first examines various extensions to Cascade-Correlation,...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
This paper is an overview of cascade-correlation neural networks which form a specific class inside ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
Engineering design often requires the optimisation of multiple objectives, and becomes significantly...
Neural network modeling typically ignores the role of knowledge in learning by starting from random ...
We discuss the weight update rule in the Cascade Correlation neural net learning algorithm. The weig...
Abstract: "Cascade-Correlation is a new architecture and supervised learning algorithm for artificia...
An experimental investigation of the cascade-correlation network (CC) is carried out in different be...
Constructive algorithms have proved to be powerful methods for training feedforward neural networks....
Abstract: In this paper we present a simple modification of some cascade-correlation type constructi...
Cascade correlation (CC) constitutes a training method for neural networks which determines the weig...
Multi-task learning (MTL) is an established method of inducing bias in neural network learning. It h...