The effects of external fields on the retrieval properties of highly dilute attractor neural networks with general classes of learning rules are examined. It can be shown that external fields increase basins of attraction making even perfect retrieval possible for relatively high loading. The application of different classes of noise distributions on the stimulus field indicates that certain first-order transitions occuring are peculiarities of the type of noise. Optimally adapted networks in the presence of external fields extend the critical loading above which perfect retrieval is impossible. In the presence of external fields in the high-temperature regime, Hebb networks also retrieve better than rules with more optimal performances...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
The recently proposed self-consistent signal-to-noise analysis is applied to a current--rate dynamic...
For a neural network with sign-constrained weights weights three types of attractor can affect the d...
By adapting an attractor neural network to an appropriate training overlap, the authors optimize its...
The authors consider the retrieval properties of attractor neural networks whose synaptic matrices h...
Based on the behavior of living beings, which react mostly to external stimuli, we introduce a neura...
In this paper a simple two-layer neural network's model, similar to that, studied by D.Amit and...
I propose tools to probe the nature of the retrieval attractors in neural networks. These include th...
We propose tools to probe the nature of attractors in dynamical systems. These include the activity ...
I propose tools to probe the nature of the retrieval attractors in neural networks. These include th...
The principle of adaptation in a noisy retrieval environment is extended here to a diluted attractor...
We consider training noise in neural networks as a means of tuning the structure of retrieval basins...
In the context of learning in attractor neural networks (ANN) we discuss the issue of the constraint...
We performed a systematic study of the sizes of the basins of attraction in a Hebbian-type neural ne...
Abstract — We study the notion of a strong attractor of a Hopfield neural model as a pattern that ha...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
The recently proposed self-consistent signal-to-noise analysis is applied to a current--rate dynamic...
For a neural network with sign-constrained weights weights three types of attractor can affect the d...
By adapting an attractor neural network to an appropriate training overlap, the authors optimize its...
The authors consider the retrieval properties of attractor neural networks whose synaptic matrices h...
Based on the behavior of living beings, which react mostly to external stimuli, we introduce a neura...
In this paper a simple two-layer neural network's model, similar to that, studied by D.Amit and...
I propose tools to probe the nature of the retrieval attractors in neural networks. These include th...
We propose tools to probe the nature of attractors in dynamical systems. These include the activity ...
I propose tools to probe the nature of the retrieval attractors in neural networks. These include th...
The principle of adaptation in a noisy retrieval environment is extended here to a diluted attractor...
We consider training noise in neural networks as a means of tuning the structure of retrieval basins...
In the context of learning in attractor neural networks (ANN) we discuss the issue of the constraint...
We performed a systematic study of the sizes of the basins of attraction in a Hebbian-type neural ne...
Abstract — We study the notion of a strong attractor of a Hopfield neural model as a pattern that ha...
In neural networks, two specific dynamical behaviours are well known: 1) Networks naturally find pat...
The recently proposed self-consistent signal-to-noise analysis is applied to a current--rate dynamic...
For a neural network with sign-constrained weights weights three types of attractor can affect the d...