Recurrent networks have been proposed as a model of associative memory. In such models, memory items are stored in the strength of connections between neurons. These modifiable connections or synapses constitute a shared resource among all stored memories, limiting the capacity of the network. Synaptic plasticity at different time scales can play an important role in optimizing the representation of associative memories, by keeping them sparse, uncorrelated and non-redundant. Here, we use a model of sequence memory to illustrate how plasticity allows a recurrent network to self-optimize by gradually re-encoding the representation of its memory items. A learning rule is used to sparsify large patterns, i.e., patterns with many active units. ...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
Our brain has the capacity to analyze a visual scene in a split second, to learn how to play an inst...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
Recurrent networks have been proposed as a model of associative memory. In such models, memory items...
Abstract A long standing challenge in biological and artificial intelligence is to understand how ne...
Although already William James and, more explicitly, Donald Hebb's theory of cell assemblies have su...
New experiences can be memorized by modifying the synaptic efficacies. Old memories are partially ov...
<p><b>A</b>, Memory storage by Hebbian weight plasticity (Eq. 5) in a fully connected network (). Ad...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
<p><b>A.</b> Memories are stored in the recurrent collaterals of a neural network. Five example syna...
We study the storage of multiple phase-coded patterns as stable dynamical attractors in recurrent ne...
Theoretical models of associative memory generally assume most of their parameters to be homogeneous...
Brain networks store new memories using functional and structural synaptic plasticity. Memory format...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
Our brain has the capacity to analyze a visual scene in a split second, to learn how to play an inst...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
Recurrent networks have been proposed as a model of associative memory. In such models, memory items...
Abstract A long standing challenge in biological and artificial intelligence is to understand how ne...
Although already William James and, more explicitly, Donald Hebb's theory of cell assemblies have su...
New experiences can be memorized by modifying the synaptic efficacies. Old memories are partially ov...
<p><b>A</b>, Memory storage by Hebbian weight plasticity (Eq. 5) in a fully connected network (). Ad...
permits unrestricted use, distribution, and reproduction in any medium, provided the original work i...
<p><b>A.</b> Memories are stored in the recurrent collaterals of a neural network. Five example syna...
We study the storage of multiple phase-coded patterns as stable dynamical attractors in recurrent ne...
Theoretical models of associative memory generally assume most of their parameters to be homogeneous...
Brain networks store new memories using functional and structural synaptic plasticity. Memory format...
Recurrent neural networks have been shown to be able to store memory patterns as fixed point attract...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...
Our brain has the capacity to analyze a visual scene in a split second, to learn how to play an inst...
The CA3 region of the hippocampus is a recurrent neural network that is essential for the storage an...