In this paper, we analyze the recurrent correlation associative memory (RCAM) model of Chiueh and Goodman. This is an associative memory in which stored binary memory patterns are recalled via an iterative update rule. The update of the individual pattern-bits is controlled by an excitation function, which takes as its arguement the inner product between the stored memory patterns and the input patterns. Our contribution is to analyze the dynamics of pattern recall when the input patterns are corrupted by noise of a relatively unrestricted class. We make three contributions. First, we show how to identify the excitation function which maximizes the separation (the Fisher discriminant) between the uncorrupted realization of the noisy input p...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
Abstract-This paper addresses recurrent neural architectures based on coupled bifurcating nodes that...
A model for a class of high-capacity associative memories is presented. Since they are based on two-...
This paper proposes a general model for bidirectional associative memories that associate patterns b...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
Recent advances in associative memory design through structured pat-tern sets and graph-based infere...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
Abstract-This paper addresses recurrent neural architectures based on coupled bifurcating nodes that...
A model for a class of high-capacity associative memories is presented. Since they are based on two-...
This paper proposes a general model for bidirectional associative memories that associate patterns b...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
We consider the problem of neural association for a network of nonbinary neurons. Here, the task is ...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
Attractor neural networks such as the Hopfield model can be used to model associative memory. An eff...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Recent advances in associative memory design through structured pattern sets and graph-based inferen...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
Recent advances in associative memory design through structured pat-tern sets and graph-based infere...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
The human brain is an extremely powerful pattern recogniser, as well as being capable of displaying ...
In this paper we introduce an improved binary correlation matrix memory (CMM) with better storage ca...
Abstract-This paper addresses recurrent neural architectures based on coupled bifurcating nodes that...