A new learning scheme is proposed for neural network architectures like the Hopfield network and bidirectional associative memory. This scheme, which replaces the commonly used learning rules, follows from the proof of the result that learning in these connectivity architectures is equivalent to learning in the 2-state perceptron. Consequently, optimal learning algorithms for the perceptron can be directly applied to learning in these connectivity architectures. Similar results are established for learning in the multistate perceptron, thereby leading to an optimal learning algorithm. Experimental results are provided to show the superiority of the proposed method
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
A new learning scheme is proposed for neural network architectures like the Hopfield network and bid...
Associative memories with recurrent connectivity can be built from networks of perceptrons and train...
An optimal learning scheme is proposed for a class of Bidirectional Associative Memories(BAM's). Thi...
Abstract: Associative memories with recurrent connectivity can be built from networks of perceptrons...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
A new perceptron learning rule which works with multilayer neural networks made of multi-state units...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
A new learning scheme is proposed for neural network architectures like the Hopfield network and bid...
Associative memories with recurrent connectivity can be built from networks of perceptrons and train...
An optimal learning scheme is proposed for a class of Bidirectional Associative Memories(BAM's). Thi...
Abstract: Associative memories with recurrent connectivity can be built from networks of perceptrons...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
Hopfield neural networks are a possible basis for modelling associative memory in living organisms. ...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
The effectiveness of connectionist models in emulating intelligent behaviour and solving significant...
A new perceptron learning rule which works with multilayer neural networks made of multi-state units...
A new efficient learning algorithm of associative memory neural network is proposed, with the follow...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...
Many researchers have recently focused their efforts on devising efficient algorithms, mainly based ...