An information processing task which generates combinatorial explosion and program complexity when it is treated by a serial algorithm is investigated using both Genetic Algorithms (GA) and a neural network model (NN). The task in question is to find a target memory from a set of stored entries in the form of "attractors" in a high dimensional state space. The representation of entries in the memory is distributed ("an auto associative neural network" in this paper), and the problem is to find an attractor under a given access information where the uniqueness or even existence of a solution is not always guaranteed ( an ill-posed problem ). The GA is used as an algorithm for generating a search orbit to search effectively for a state which ...
We study possible applications of artificial neural networks to examine the string landscape. Since ...
Sixth International Conference on Genetic AlgorithmsWe propose a genetic algorithm for mutually conn...
Neural networks and genetic algorithms are the two sophisticated machine learning techniques present...
An information processing task which generates combinatorial explosion and program complexity when i...
In this paper, a novel associative memory model will be proposed and applied to memory retrievals ba...
We apply some variants of evolutionary computations to the Hopfield model of associative memory. In ...
AbstractThis paper describes the implementation of a genetic algorithm to evolve the population of w...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
We are applying genetic algorithms to fully connected neural network model of associative memory, We...
The present work investigates the applicability of Genetic Algorithms (GA) to the problem of signal ...
In biological systems, the dynamic analysis method has gained increasing attention in the past decad...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
The link between the structure of a neural network and its attractor states is investigated, with a ...
. We apply evolutionary computations to Hopfield model of associative memory. Although there have be...
We study possible applications of artificial neural networks to examine the string landscape. Since ...
Sixth International Conference on Genetic AlgorithmsWe propose a genetic algorithm for mutually conn...
Neural networks and genetic algorithms are the two sophisticated machine learning techniques present...
An information processing task which generates combinatorial explosion and program complexity when i...
In this paper, a novel associative memory model will be proposed and applied to memory retrievals ba...
We apply some variants of evolutionary computations to the Hopfield model of associative memory. In ...
AbstractThis paper describes the implementation of a genetic algorithm to evolve the population of w...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
We are applying genetic algorithms to fully connected neural network model of associative memory, We...
The present work investigates the applicability of Genetic Algorithms (GA) to the problem of signal ...
In biological systems, the dynamic analysis method has gained increasing attention in the past decad...
A major difficulty in a search-based problem-solving process is the task of searching the potentiall...
The link between the structure of a neural network and its attractor states is investigated, with a ...
. We apply evolutionary computations to Hopfield model of associative memory. Although there have be...
We study possible applications of artificial neural networks to examine the string landscape. Since ...
Sixth International Conference on Genetic AlgorithmsWe propose a genetic algorithm for mutually conn...
Neural networks and genetic algorithms are the two sophisticated machine learning techniques present...