The information capacity of Kanerva's Sparse Distributed Memory (SDM) and Hopfield-type neural networks is investigated. Under the approximations used, it is shown that the total information stored in these systems is proportional to the number connections in the network. The proportionality constant is the same for the SDM and Hopfield-type models independent of the particular model, or the order of the model. The approximations are checked numerically. This same analysis can be used to show that the SDM can store sequences of spatiotemporal patterns, and the addition of time-delayed connections allows the retrieval of context dependent temporal patterns. A minor modification of the SDM can be used to store correlated patterns
SCOPUS=eid=2-s2.0-80052989624 We study the storage and retrieval of phase-coded patterns as stable ...
The effects of storing p statistically independent but effectively correlated patterns in the Hopfie...
A new viewpoint of the processing performed by Kanerva's sparse distributed memory (SDM) is presente...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
For a number of years, artificial neural networks have been used for a variety of applications to au...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
AbstractWe investigate how geometric properties translate into functional properties in sparse netwo...
Sparse Distributed Memory (or Kanerva Networks) is a technique first introduced as a model of memory...
We present a Hopfield-like autoassociative network for memories representing examples of concepts. E...
The information capacity of general forms of memory is formalized. The number of bits of information...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
This thesis introduces several variants to the classical autoassociative memory model in order to ca...
The Sparse Distributed Memory (SDM)[1] was originally developed to tackle the problem of storing lar...
SCOPUS=eid=2-s2.0-80052989624 We study the storage and retrieval of phase-coded patterns as stable ...
The effects of storing p statistically independent but effectively correlated patterns in the Hopfie...
A new viewpoint of the processing performed by Kanerva's sparse distributed memory (SDM) is presente...
Hopfield-type, neural-network models. A mathematical framework for cornporing the two models is deve...
We analyze the storage capacity of the Hopfield model with spatially correlated patterns ¸ i (i.e....
We analyze the storage capacity of a variant of the Hopfield model with semantically correlated patt...
For a number of years, artificial neural networks have been used for a variety of applications to au...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
AbstractWe investigate how geometric properties translate into functional properties in sparse netwo...
Sparse Distributed Memory (or Kanerva Networks) is a technique first introduced as a model of memory...
We present a Hopfield-like autoassociative network for memories representing examples of concepts. E...
The information capacity of general forms of memory is formalized. The number of bits of information...
We study a model of spiking neurons, with recurrent connections that result from learning a set of s...
This thesis introduces several variants to the classical autoassociative memory model in order to ca...
The Sparse Distributed Memory (SDM)[1] was originally developed to tackle the problem of storing lar...
SCOPUS=eid=2-s2.0-80052989624 We study the storage and retrieval of phase-coded patterns as stable ...
The effects of storing p statistically independent but effectively correlated patterns in the Hopfie...
A new viewpoint of the processing performed by Kanerva's sparse distributed memory (SDM) is presente...