Networks of neurons in the brain encode preferred patterns of neural activity via their synaptic connections. Despite receiving considerable attention, the precise relationship between network connectivity and encoded patterns is still poorly understood. Here we consider this problem for networks of threshold-linear neurons whose computational function is to learn and store a set of binary patterns (e.g., a neural code) as “permitted sets” of the network. We introduce a simple encoding rule that selectively turns “on” synapses between neurons that coappear in one or more patterns. The rule uses synapses that are binary, in the sense of having only two states (“on” or “off”), but also heterogeneous, with weights drawn from an underlying syna...
We derive the Gardner storage capacity for associative networks of threshold linear units, and show ...
Collective computation is typically polynomial in the number of computational elements, such as tran...
This study examines the relationship between population coding and spatial connection statistics in ...
Networks of neurons in the brain encode preferred patterns of neural activity via their synap-tic co...
A binary neural network that stores only mutually orthogonal patterns is shown to converge, when pro...
Attractor neural networks (ANNs) are one of the leading theoretical frameworks for the formation and...
We describe the combinatorics of equilibria and steady states of neurons in threshold-linear network...
Patterns over (-1,0,1) define, by their outer products, partially connected neural networks, consist...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
We show that a message-passing process allows us to store in binary ‘‘material'' synapses a number o...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Cyclic patterns of neuronal activity are ubiquitous in animal nervous systems, and partially respons...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
We derive the Gardner storage capacity for associative networks of threshold linear units, and show ...
Collective computation is typically polynomial in the number of computational elements, such as tran...
This study examines the relationship between population coding and spatial connection statistics in ...
Networks of neurons in the brain encode preferred patterns of neural activity via their synap-tic co...
A binary neural network that stores only mutually orthogonal patterns is shown to converge, when pro...
Attractor neural networks (ANNs) are one of the leading theoretical frameworks for the formation and...
We describe the combinatorics of equilibria and steady states of neurons in threshold-linear network...
Patterns over (-1,0,1) define, by their outer products, partially connected neural networks, consist...
In standard attractor neural network models, specific patterns of activity are stored in the synapti...
We show that a message-passing process allows us to store in binary ‘‘material'' synapses a number o...
We consider the problem of neural association for a network of non-binary neurons. Here, the task is...
The Little-Hopfield network is an auto-associative computational model of neural memory storage and ...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Cyclic patterns of neuronal activity are ubiquitous in animal nervous systems, and partially respons...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
We derive the Gardner storage capacity for associative networks of threshold linear units, and show ...
Collective computation is typically polynomial in the number of computational elements, such as tran...
This study examines the relationship between population coding and spatial connection statistics in ...