Title :
Synthesis of fault-tolerant feedforward neural networks using minimax optimization
Author :
Deodhare, Dipti ; Vidyasagar, M. ; Sathiya Keethi, S.
Author_Institution :
Centre for Artificial Intelligence & Robotics, Bangalore, India
fDate :
9/1/1998 12:00:00 AM
Abstract :
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. Two 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 of the sequence. Several modifications are made to the basic algorithm to improve its speed of convergence. In the second method a different approach is used to convert the problem to a single unconstrained minimization problem whose solution very nearly equals that of the original minimax problem. Networks synthesized using these methods, though not always fault tolerant, exhibit an acceptable degree of partial fault tolerance
Keywords :
feedforward neural nets; least squares approximations; minimax techniques; nonlinear programming; constrained minimax optimization problem; convergence speed; efficient gradient-based minimization technique; fault-tolerant feedforward neural network synthesis; nonlinear least-squares optimization; partial fault tolerance; unconstrained least-squares optimization problem sequence; unconstrained minimization problem; Artificial neural networks; Backpropagation algorithms; Biological neural networks; Constraint optimization; Degradation; Fault tolerance; Feedforward neural networks; Minimax techniques; Network synthesis; Neural networks;
Journal_Title :
Neural Networks, IEEE Transactions on