Brain-inspired, artificial neural network approach offers the ability to develop attractors for each pattern if feedback connections are allowed. It also exhibits great stability and adaptability with regards to noise and pattern degradation and can perform generalization tasks. In particular, the Bidirectional Associative Memory (BAM) model has shown great promise for pattern recognition for its capacity to be trained using a supervised or unsupervised scheme. This paper describes such a BAM, one that can encode patterns of real and binary values, perform multistep pattern recognition of variable-size time series and accomplish many-to-one associations. Moreover, it will be shown that the BAM can be generalized to multiple associative memo...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
Abstract—Typical bidirectional associative memories (BAM) use an offline, one-shot learning rule, ha...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
This paper proposes a general model for bidirectional associative memories that associate patterns b...
Associative memory is a data collectively stored in the form of a memory or weight matrix, which is ...
This paper introduces an associative memory model which associates n-tuples of patterns, employs con...
Abstract — Most models of Bidirectional associative memories intend to achieve that all trained patt...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Abstract. Hebbian hetero-associative learning is inherently asymmetric. Storing a forward associatio...
Objective Neural networks are being used for solving problems in various diverse areas including edu...
We investigate by statistical mechanical methods a stochastic analogue of the bidirectional associat...
In this paper, we present a neural network system related to about memory and recall that consists o...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...
Abstract—Typical bidirectional associative memories (BAM) use an offline, one-shot learning rule, ha...
Learning in bidirectional associative memory (BAM) is typically Hebbian-based. Since Kosko's 1988 ['...
Learning in Bidirectional Associative Memory (BAM) is typically based on Hebbian-type learning. Sinc...
This paper proposes a general model for bidirectional associative memories that associate patterns b...
Associative memory is a data collectively stored in the form of a memory or weight matrix, which is ...
This paper introduces an associative memory model which associates n-tuples of patterns, employs con...
Abstract — Most models of Bidirectional associative memories intend to achieve that all trained patt...
Abstract—We consider the problem of neural association, which deals with the retrieval of a previous...
Abstract. Hebbian hetero-associative learning is inherently asymmetric. Storing a forward associatio...
Objective Neural networks are being used for solving problems in various diverse areas including edu...
We investigate by statistical mechanical methods a stochastic analogue of the bidirectional associat...
In this paper, we present a neural network system related to about memory and recall that consists o...
Introduction The associative memory is one of the fundamental algorithms of information processing ...
Abstract—We consider the problem of neural association for a network of non-binary neurons. Here, th...
A number of neural network models, in which fixed-point and limit-cycle attractors of the underlying...