The problem of representing large sets of complex state sequences (CSSs)-i.e. sequences in which states can recur multiple times--has thus far resisted solution. This paper describes a novel neural network model, TEMECOR, which has very large capacity for storing CSSs. Furthermore, in contrast to the various back- propagation-based attempts at solving the CSS problem, TEMECOR requires only a single presentation of each sequence. TEMECOR's power derives from a) its use of a combinatorial, distributed representation scheme, and b) its method of choosing internal representations of states at random. Simulation results are presented which show that the number of spatio-temporal binary feature patterns which can be stored to some criterion accur...
Sequence information processing, for instance, the sequence memory, plays an important role on many ...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
The information capacity of Kanerva's Sparse Distributed Memory (SDM) and Hopfield-type neural netwo...
The proposed model, called the combinatorial and competitive spatio-temporal memory or CCSTM, provid...
Based on the previous work of a number of authors, we discuss an important class of neural networks ...
A simple architecture and algorithm for analytically guaranteed associa-tive memory storage of analo...
This paper introduces an associative memory model which associates n-tuples of patterns, employs con...
International audienceAbstraet-A neural network model for fast learning and storage of temporal sequ...
For a number of years, artificial neural networks have been used for a variety of applications to au...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
Abstract—An extension to a recently introduced architecture of clique-based neural networks is prese...
Neural network research, long focused on static pattern recognition, is now extended to spatiotempor...
In this paper, we present a neural network system related to about memory and recall that consists o...
Brain-inspired, artificial neural network approach offers the ability to develop attractors for each...
Sequence information processing, for instance, the sequence memory, plays an important role on many ...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
The information capacity of Kanerva's Sparse Distributed Memory (SDM) and Hopfield-type neural netwo...
The proposed model, called the combinatorial and competitive spatio-temporal memory or CCSTM, provid...
Based on the previous work of a number of authors, we discuss an important class of neural networks ...
A simple architecture and algorithm for analytically guaranteed associa-tive memory storage of analo...
This paper introduces an associative memory model which associates n-tuples of patterns, employs con...
International audienceAbstraet-A neural network model for fast learning and storage of temporal sequ...
For a number of years, artificial neural networks have been used for a variety of applications to au...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
Abstract—An extension to a recently introduced architecture of clique-based neural networks is prese...
Neural network research, long focused on static pattern recognition, is now extended to spatiotempor...
In this paper, we present a neural network system related to about memory and recall that consists o...
Brain-inspired, artificial neural network approach offers the ability to develop attractors for each...
Sequence information processing, for instance, the sequence memory, plays an important role on many ...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
The information capacity of Kanerva's Sparse Distributed Memory (SDM) and Hopfield-type neural netwo...