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 hebbian synapse


Self-organization of Hebbian Synapses in Hippocampal Neurons

Neural Information Processing Systems

We are exploring the significance of biological complexity for neuronal computation. Here we demonstrate that Hebbian synapses in realistical(cid:173) ly-modeled hippocampal pyramidal cells may give rise to two novel forms of self -organization in response to structured synaptic input. First, on the basis of the electrotonic relationships between synaptic contacts, a cell may become tuned to a small subset of its input space. Second, the same mechanisms may produce clusters of potentiated synapses across the space of the dendrites. The latter type of self-organization may be functionally significant in the presence of nonlinear dendritic conduc(cid:173) tances.


Effective Learning Requires Neuronal Remodeling of Hebbian Synapses

Neural Information Processing Systems

This paper revisits the classical neuroscience paradigm of Hebbian learning. We find that a necessary requirement for effective as(cid:173) sociative memory learning is that the efficacies of the incoming synapses should be uncorrelated. This requirement is difficult to achieve in a robust manner by Hebbian synaptic learning, since it depends on network level information. Effective learning can yet be obtained by a neuronal process that maintains a zero sum of the in(cid:173) coming synaptic efficacies. This normalization drastically improves the memory capacity of associative networks, from an essentially bounded capacity to one that linearly scales with the network's size.


Effective Learning Requires Neuronal Remodeling of Hebbian Synapses

Chechik, Gal, Meilijson, Isaac, Ruppin, Eytan

Neural Information Processing Systems

This paper revisits the classical neuroscience paradigm of Hebbian learning. We find that a necessary requirement for effective associative memory learning is that the efficacies of the incoming synapses should be uncorrelated. This requirement is difficult to achieve in a robust manner by Hebbian synaptic learning, since it depends on network level information. Effective learning can yet be obtained by a neuronal process that maintains a zero sum of the incoming synaptic efficacies. This normalization drastically improves the memory capacity of associative networks, from an essentially bounded capacity to one that linearly scales with the network's size.


Effective Learning Requires Neuronal Remodeling of Hebbian Synapses

Chechik, Gal, Meilijson, Isaac, Ruppin, Eytan

Neural Information Processing Systems

This paper revisits the classical neuroscience paradigm of Hebbian learning. We find that a necessary requirement for effective associative memory learning is that the efficacies of the incoming synapses should be uncorrelated. This requirement is difficult to achieve in a robust manner by Hebbian synaptic learning, since it depends on network level information. Effective learning can yet be obtained by a neuronal process that maintains a zero sum of the incoming synaptic efficacies. This normalization drastically improves the memory capacity of associative networks, from an essentially bounded capacity to one that linearly scales with the network's size.


Effective Learning Requires Neuronal Remodeling of Hebbian Synapses

Chechik, Gal, Meilijson, Isaac, Ruppin, Eytan

Neural Information Processing Systems

We find that a necessary requirement for effective associative memorylearning is that the efficacies of the incoming synapses should be uncorrelated. This requirement is difficult to achieve in a robust manner by Hebbian synaptic learning, since it depends on network level information. Effective learning can yet be obtained by a neuronal process that maintains a zero sum of the incoming synapticefficacies. This normalization drastically improves the memory capacity of associative networks, from an essentially bounded capacity to one that linearly scales with the network's size. It also enables the effective storage of patterns with heterogeneous coding levels in a single network.


Self-organization of Hebbian Synapses in Hippocampal Neurons

Brown, Thomas H., Mainen, Zachary F., Zador, Anthony M., Claiborne, Brenda J.

Neural Information Processing Systems

We are exploring the significance of biological complexity for neuronal computation. Here we demonstrate that Hebbian synapses in realistically-modeled hippocampal pyramidal cells may give rise to two novel forms of self -organization in response to structured synaptic input. First, on the basis of the electrotonic relationships between synaptic contacts, a cell may become tuned to a small subset of its input space. Second, the same mechanisms may produce clusters of potentiated synapses across the space of the dendrites. The latter type of self-organization may be functionally significant in the presence of nonlinear dendritic conductances.


Self-organization of Hebbian Synapses in Hippocampal Neurons

Brown, Thomas H., Mainen, Zachary F., Zador, Anthony M., Claiborne, Brenda J.

Neural Information Processing Systems

We are exploring the significance of biological complexity for neuronal computation. Here we demonstrate that Hebbian synapses in realistically-modeled hippocampal pyramidal cells may give rise to two novel forms of self -organization in response to structured synaptic input. First, on the basis of the electrotonic relationships between synaptic contacts, a cell may become tuned to a small subset of its input space. Second, the same mechanisms may produce clusters of potentiated synapses across the space of the dendrites. The latter type of self-organization may be functionally significant in the presence of nonlinear dendritic conductances.


Self-organization of Hebbian Synapses in Hippocampal Neurons

Brown, Thomas H., Mainen, Zachary F., Zador, Anthony M., Claiborne, Brenda J.

Neural Information Processing Systems

We are exploring the significance of biological complexity for neuronal computation. Here we demonstrate that Hebbian synapses in realistically-modeled hippocampalpyramidal cells may give rise to two novel forms of self-organization in response to structured synaptic input. First, on the basis of the electrotonic relationships between synaptic contacts, a cell may become tuned to a small subset of its input space. Second, the same mechanisms may produce clusters of potentiated synapses across the space of the dendrites. The latter type of self-organization may be functionally significant in the presence of nonlinear dendritic conductances.