Theoretical models of associative memory generally assume most of their parameters to be homogeneous across the network. Conversely, biological neural networks exhibit high variability of structural as well as activity parameters. In this paper, we extend the classical clipped learning rule by Willshaw to networks with inhomogeneous sparseness, i.e., the number of active neurons may vary across memory items. We evaluate this learning rule for sequence memory networks with instantaneous feedback inhibition and show that little surprisingly, memory capacity degrades with increased variability in sparseness. The loss of capacity, however, is very small for short sequences of less than about 10 associations. Most interestingly, we further show ...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
International audienceWillshaw networks are a type of associative memories with a storing mechanism ...
Theoretical models of associative memory generally assume most of their parameters to be homogeneous...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Recurrent networks have been proposed as a model of associative memory. In such models, memory items...
Sequential activity has been observed in multiple neuronal circuits across species, neural structure...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
According to one of the folk tenets neural associative memories are robust, i.e. computation in them...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
© 2020 Elsevier Ltd. All rights reserved. This manuscript is licensed under the Creative Commons Att...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Despite the complexity of human memory, paradigms like free recall have revealed robust qualitative ...
Complex patterns of neural activity appear during up-states in the neocortex and sharp waves in the ...
A fundamental problem in neuroscience is understanding how working memory-the ability to store infor...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
International audienceWillshaw networks are a type of associative memories with a storing mechanism ...
Theoretical models of associative memory generally assume most of their parameters to be homogeneous...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
Recurrent networks have been proposed as a model of associative memory. In such models, memory items...
Sequential activity has been observed in multiple neuronal circuits across species, neural structure...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
According to one of the folk tenets neural associative memories are robust, i.e. computation in them...
Sequence memory is an essential attribute of natural and artificial intelligence that enables agents...
© 2020 Elsevier Ltd. All rights reserved. This manuscript is licensed under the Creative Commons Att...
Threshold-linear (graded response) units approximate the real firing behaviour of pyramidal neurons ...
Despite the complexity of human memory, paradigms like free recall have revealed robust qualitative ...
Complex patterns of neural activity appear during up-states in the neocortex and sharp waves in the ...
A fundamental problem in neuroscience is understanding how working memory-the ability to store infor...
Much evidence indicates that the perirhinal cortex is involved in the familiarity discrimination asp...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
International audienceWillshaw networks are a type of associative memories with a storing mechanism ...