In this thesis, I show that a single class of unsupervised learning rules that can be inferred from in vivo data learns neuronal representations consistent with a wide range of datasets. Recurrent neuronal networks endowed with learning rules of this class represent memories as qualitatively different spatiotemporal attractors (i.e. fixed-point attractors, chaotic attractors or transient sequences of activity) depending on the stimuli statistics and learning rule. They match disparate observations from recordings in different species, brain regions and memory tasks, suggesting that memories are differentially represented in brain systems. This thesis provides a unified model for explaining the diversity in neuronal dynamics during memory re...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
SummaryThe ability to associate some stimuli while differentiating between others is an essential ch...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
The ability to associate some stimuli while differentiating between others is an essential character...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
Single electrode recordings in inferotemporal cortex of monkeys during delayed visual memory tasks p...
A recurrently connected attractor neural network with a Hebbian learning rule is currently our best ...
A recurrently connected attractor neural network with a Hebbian learning rule is currently our best ...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Memory is a fundamental part of computational systems like the human brain. Theoretical models ident...
SummaryThe ability to associate some stimuli while differentiating between others is an essential ch...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
For the last twenty years, several assumptions have been expressed in the fields of information proc...
The ability to associate some stimuli while differentiating between others is an essential character...
Attractor networks are an influential theory for memory storage in brain systems. This theory has re...
Neuromorphic chips embody computational principles operating in the nervous system, into microelectr...
Single electrode recordings in inferotemporal cortex of monkeys during delayed visual memory tasks p...
A recurrently connected attractor neural network with a Hebbian learning rule is currently our best ...
A recurrently connected attractor neural network with a Hebbian learning rule is currently our best ...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
Understanding the theoretical foundations of how memories are encoded and retrieved in neural popula...
The work of this thesis concerns how cortical memories are stored and retrieved. In particular, larg...