In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the use of gradient-based and other iterative search methods. Stochastic learning automata have previously been shown to have global optimisation properties making them suitable for the optimisation of filter coefficients. Continuous action reinforcement learning automata are presented as an extension to the standard automata which operate over discrete parameter sets. Global convergence is claimed, and demonstrations are carried out via a number of computer simulations. © 2002 Elsevier Science Ltd. All rights reserved
A feedforward network composed of units of teams of parameterized learning automata is considered as...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
Abstract:- A stochastic automaton can perform a finite number of actions in a random environment. Wh...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
Learning automata are adaptive decision making devices that are found useful in a variety of machi...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
This paper analyzes the long-term behavior of the Reinforce and related algorithms (Williams 1986, 1...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
A feedforward network composed of units of teams of parameterized learning automata is considered as...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
Abstract:- A stochastic automaton can perform a finite number of actions in a random environment. Wh...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
In the design of adaptive IIR filters, the multi-modal nature of the error surfaces can limit the us...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
The problem of optimization with noisy measurements is common in many areas of engineering. The only...
Learning automata are adaptive decision making devices that are found useful in a variety of machi...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
This paper analyzes the long-term behavior of the Reinforce and related algorithms (Williams 1986, 1...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
Analyzes the long-term behavior of the REINFORCE and related algorithms (Williams, 1986, 1988, 1992)...
We consider stochastic automata models of learning systems in this article. Such learning automata s...
A feedforward network composed of units of teams of parameterized learning automata is considered as...
This paper presents an overview of the field of Stochastic Learning Automata (LA), and concentrates,...
Abstract:- A stochastic automaton can perform a finite number of actions in a random environment. Wh...