It is a neural network truth universally acknowledged, that the signal transmitted to a target node must be equal to the product of the path signal times a weight. Analysis of catastrophic forgetting by distributed codes leads to the unexpected conclusion that this universal synaptic transmission rule may not be optimal in certain neural networks. The distributed outstar, a network designed to support stable codes with fast or slow learning, generalizes the outstar network for spatial pattern learning. In the outstar, signals from a source node cause weights to learn and recall arbitrary patterns across a target field of nodes. The distributed outstar replaces the outstar source node with a source field, of arbitrarily many nodes, where the...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
A new learning rule (Precise-Spike-Driven (PSD) Synaptic Plasticity) is proposed for processing and ...
Performing more tasks in parallel is a typical feature of complex brains. These are characterized by...
The distributed outstar, a generalization of the outstar neural network for spatial pattern learning...
Markram and Tsodyks, by showing that the elevated synaptic efficacy observed with single-pulse LTP m...
A class of adaptive resonance theory (ART) models for learning, recognition, and prediction with arb...
Adaptive resonance theory (ART) models have been used for learning and prediction in a wide variety ...
Distributed coding at the hidden layer of a multi-layer perceptron (MLP) endows the network with mem...
Distributed coding at the hidden layer of a multi-layer perceptron (MLP) endows the network with mem...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
Recent studies have proposed that the diffusion of messenger molecules, such as monoamines, can medi...
Neural networks that follow the Parallel Distributed Processing (PDP) paradigm suffer from catastrop...
The Problem: How can a distributed system of independent processors, armed with local communication ...
Abstract|Multi-layer networks of threshold logic units offer an attractive framework for the design ...
Rumelhart, Hinton and Williams [Rumelhart et al. 86] describe a learning procedure for layered netwo...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
A new learning rule (Precise-Spike-Driven (PSD) Synaptic Plasticity) is proposed for processing and ...
Performing more tasks in parallel is a typical feature of complex brains. These are characterized by...
The distributed outstar, a generalization of the outstar neural network for spatial pattern learning...
Markram and Tsodyks, by showing that the elevated synaptic efficacy observed with single-pulse LTP m...
A class of adaptive resonance theory (ART) models for learning, recognition, and prediction with arb...
Adaptive resonance theory (ART) models have been used for learning and prediction in a wide variety ...
Distributed coding at the hidden layer of a multi-layer perceptron (MLP) endows the network with mem...
Distributed coding at the hidden layer of a multi-layer perceptron (MLP) endows the network with mem...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
Recent studies have proposed that the diffusion of messenger molecules, such as monoamines, can medi...
Neural networks that follow the Parallel Distributed Processing (PDP) paradigm suffer from catastrop...
The Problem: How can a distributed system of independent processors, armed with local communication ...
Abstract|Multi-layer networks of threshold logic units offer an attractive framework for the design ...
Rumelhart, Hinton and Williams [Rumelhart et al. 86] describe a learning procedure for layered netwo...
One of the most important and ubiquitous building blocks of machine learning is gradient based optim...
A new learning rule (Precise-Spike-Driven (PSD) Synaptic Plasticity) is proposed for processing and ...
Performing more tasks in parallel is a typical feature of complex brains. These are characterized by...