In this paper, a novel associative memory model will be proposed and applied to memory retrievals based on the conventional continuous time model. The conventional model presents memory capacity is very low and retrieval process easily converges to an equilibrium state which is very different from the stored patterns. Genetic Algorithms is well-known with the capability of global optimal search escaping local optimum on progress to reach a global optimum. Based on the well-known idea of Genetic Algorithms, this work proposes a heuristic rule to make a mutation when the state of the network is trapped in a spurious memory. The proposal heuristic associative memory show the stored capacity does not depend on the number of stored patterns and ...
Describes search of associative memory (SAM), a general theory of retrieval from long-term memory th...
Associative memories enjoy many interesting properties in terms of error correction capabilities, ro...
There have been a lot of researches which apply evolutionary techniques to layered neural networks. ...
An information processing task which generates combinatorial explosion and program complexity when i...
In recent years dynamic optimization problems have attracted a growing interest from the community o...
We are applying genetic algorithms to fully connected neural network model of associative memory, We...
. We apply genetic algorithms to fully connected Hopfield associative memory networks. Previously, w...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
We propose a genetic algorithm for mutually connected neural networks to obtain a higher capacity of...
International audienceAssociative memories are structures that store data in such a way that it can ...
International audienceThis paper describes new retrieval algorithms based on heuristic approach in c...
We apply genetic algorithms to Hopfield's neural network model of associative memory. Previousl...
This paper presents a generalized associative memory model, which stores a collection of tu-ples who...
. We apply evolutionary computations to Hopfield model of associative memory. Although there have be...
It is well known that for finite-sized networks, one-step retrieval in the autoassociative Willshaw ...
Describes search of associative memory (SAM), a general theory of retrieval from long-term memory th...
Associative memories enjoy many interesting properties in terms of error correction capabilities, ro...
There have been a lot of researches which apply evolutionary techniques to layered neural networks. ...
An information processing task which generates combinatorial explosion and program complexity when i...
In recent years dynamic optimization problems have attracted a growing interest from the community o...
We are applying genetic algorithms to fully connected neural network model of associative memory, We...
. We apply genetic algorithms to fully connected Hopfield associative memory networks. Previously, w...
In this thesis, cognitive models of associative memory are developed. The cognitive view of memory i...
We propose a genetic algorithm for mutually connected neural networks to obtain a higher capacity of...
International audienceAssociative memories are structures that store data in such a way that it can ...
International audienceThis paper describes new retrieval algorithms based on heuristic approach in c...
We apply genetic algorithms to Hopfield's neural network model of associative memory. Previousl...
This paper presents a generalized associative memory model, which stores a collection of tu-ples who...
. We apply evolutionary computations to Hopfield model of associative memory. Although there have be...
It is well known that for finite-sized networks, one-step retrieval in the autoassociative Willshaw ...
Describes search of associative memory (SAM), a general theory of retrieval from long-term memory th...
Associative memories enjoy many interesting properties in terms of error correction capabilities, ro...
There have been a lot of researches which apply evolutionary techniques to layered neural networks. ...