Abstract — Several heuristic methods have been suggested for improving the generalization capability in neural network learning, most of which are concerned with a single-objective (SO) learning tasks. In this work, we discuss generalization improvement in multi-objective learning (MO). As a case study, we investigate the generation of neural network classifiers based on the receiver operating characteristics (ROC) analysis using an evolutionary multi-objective optimization algorithm. We show on a few benchmark problems that for MO learning such as the ROC based classification, the generalization ability can be more efficiently improved within a multi-objective framework than within a single-objective one. I
Multilayer feedforward neural networks with backpropagation algorithm have been used successfully in...
It has been a controversial issue in the research of cognitive science and artificial intelligence w...
Copyright © 2006 Springer-Verlag Berlin Heidelberg. The final publication is available at link.sprin...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
Regularization is an essential technique to improve generalization of neural networks. Traditionally...
In binary classification problems, receiver operating characteristic (ROC) graphs are commonly used ...
Neural networks, particularly Multilayer Pereceptrons (MLPs) have been found to be successful for va...
Neural Networks (NN) can be trained to perform tasks such as image and handwriting recognition, cred...
Artificial neural networks have become highly effective at performing specific, challenging tasks by...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Artificial neural networks have proven to be quite powerful for solving nonlinear classification pro...
In this paper the major principles to effectively design a parameter-less, multi-objective evolution...
A new approach to promote the generalization ability of neural networks is presented. It is based on...
Abstract. This paper presents a new constructive method and pruning approaches to control the design...
Multilayer feedforward neural networks with backpropagation algorithm have been used successfully in...
It has been a controversial issue in the research of cognitive science and artificial intelligence w...
Copyright © 2006 Springer-Verlag Berlin Heidelberg. The final publication is available at link.sprin...
This thesis presents a new theory of generalization in neural network types of learning machines. Th...
Jin Y, Sendhoff B, Körner E. Simultaneous Generation of Accurate and Interpretable Neural Network Cl...
Regularization is an essential technique to improve generalization of neural networks. Traditionally...
In binary classification problems, receiver operating characteristic (ROC) graphs are commonly used ...
Neural networks, particularly Multilayer Pereceptrons (MLPs) have been found to be successful for va...
Neural Networks (NN) can be trained to perform tasks such as image and handwriting recognition, cred...
Artificial neural networks have become highly effective at performing specific, challenging tasks by...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Artificial neural networks have proven to be quite powerful for solving nonlinear classification pro...
In this paper the major principles to effectively design a parameter-less, multi-objective evolution...
A new approach to promote the generalization ability of neural networks is presented. It is based on...
Abstract. This paper presents a new constructive method and pruning approaches to control the design...
Multilayer feedforward neural networks with backpropagation algorithm have been used successfully in...
It has been a controversial issue in the research of cognitive science and artificial intelligence w...
Copyright © 2006 Springer-Verlag Berlin Heidelberg. The final publication is available at link.sprin...