In this paper we examine a technique by which fault tolerance can be embedded into a feedforward network leading to a network tolerant to the loss of a node and its associated weights. The fault tolerance problem for a feedforward network is formulated as a constrained minimax optimization problem. Typo different methods are used to solve it. In the first method, the constrained minimax optimization problem is converted to a sequence of unconstrained least-squares optimization problems, whose solutions converge to the solution of the original minimax problem. An efficient gradient-based minimization technique, specially tailored for nonlinear least-squares optimization, is then applied to perform the unconstrained minimization at each step ...
Minimisation methods for training feed-forward networks with back-propagation are compared. Feed-for...
Abstract Artificial neural networks (ANNs) are powerful computational tools that are designed to rep...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
In this paper we examine a technique by which fault tolerance can be embedded into a feedforward net...
A method is proposed to estimate the fault tolerance of feedforward Artificial Neural Nets (ANNs) an...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
The use of neural networks in critical applications necessitates that they continue to perform their...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Feedforward neural networks with error backpropagation (FFBP) are widely applied to pattern recognit...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Abstract. This paper describes a method of supervised learning based on forward selection branching....
The influence of the activation function on fault tolerance property of the feedforward neural netwo...
Abstract—The recursive training algorithm for the optimal interpolative (OI) classification network ...
In this paper we first show that standard BP algorithm cannot yeild to a uniform information distrib...
Minimisation methods for training feed-forward networks with back-propagation are compared. Feed-for...
Abstract Artificial neural networks (ANNs) are powerful computational tools that are designed to rep...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...
In this paper we examine a technique by which fault tolerance can be embedded into a feedforward net...
A method is proposed to estimate the fault tolerance of feedforward Artificial Neural Nets (ANNs) an...
this paper is to prevent the weights from having large relevances. The simulation results indicate t...
The use of neural networks in critical applications necessitates that they continue to perform their...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Feedforward neural networks with error backpropagation (FFBP) are widely applied to pattern recognit...
Wide attention was recently given to the problem of fault-tolerance in neural networks; while most a...
We propose a new learning algorithm to enhance fault tolerance of multi-layer neural networks (MLN)....
Abstract. This paper describes a method of supervised learning based on forward selection branching....
The influence of the activation function on fault tolerance property of the feedforward neural netwo...
Abstract—The recursive training algorithm for the optimal interpolative (OI) classification network ...
In this paper we first show that standard BP algorithm cannot yeild to a uniform information distrib...
Minimisation methods for training feed-forward networks with back-propagation are compared. Feed-for...
Abstract Artificial neural networks (ANNs) are powerful computational tools that are designed to rep...
This paper is concerned with utilizing neural networks and analog circuits to solve constrained opti...