Within a Kuhn-Tucker cavity method introduced in a former paper, we study optimal stability learning for situations, where in the replica formalism the replica symmetry may be broken, namely (i) the case of a simple perceptron above the critical loading, and (ii) the case of two-layer AND-perceptrons, if one learns with maximal stability. We find that the deviation of our cavity solution from the replica symmetric one in these cases is a clear indication of the necessity of replica symmetry breaking. In any case the cavity solution tends to underestimate the storage capabilities of the networks
We consider the mean field theory of optimally pruned perceptrons. Using the cavity method, microsco...
International audienceWe study the problem of determining the capacity of the binary perceptron for ...
In this three-sections lecture cavity method is introduced as heuristic framework from a Physics per...
Within a Kuhn-Tucker cavity method introduced in a former paper, we study optimal stability learning...
The relationship between the geometrical structure of weight space and replica symmetry breaking (RS...
Recent studies of optimization in neural networks trained with noisy data have shown that replica-sy...
Using the cavity method, I derive the microscopic equations and their stability condition for inform...
Replica-symmetry breaking is studied in fully connected neural networks with modified pseudo-inverse...
The information that a pattern of firing in the output layer of a feedforward network of threshold-l...
The information that a pattern of firing in the output layer of a feedforward network of threshold-l...
The Hopfield model of a neural network is studied for p = αN, where p is the number of memorized pat...
We analyze the average performance of a general class of learning algorithms for the nondeterministi...
We study the stability of the replica-symmetric solution for a perceptron learning from examples. By...
Error rates of a Boolean perceptron with threshold and either spherical or Ising constraint on the w...
The storage capacity of multilayer networks with overlapping receptive fields is investigated for a ...
We consider the mean field theory of optimally pruned perceptrons. Using the cavity method, microsco...
International audienceWe study the problem of determining the capacity of the binary perceptron for ...
In this three-sections lecture cavity method is introduced as heuristic framework from a Physics per...
Within a Kuhn-Tucker cavity method introduced in a former paper, we study optimal stability learning...
The relationship between the geometrical structure of weight space and replica symmetry breaking (RS...
Recent studies of optimization in neural networks trained with noisy data have shown that replica-sy...
Using the cavity method, I derive the microscopic equations and their stability condition for inform...
Replica-symmetry breaking is studied in fully connected neural networks with modified pseudo-inverse...
The information that a pattern of firing in the output layer of a feedforward network of threshold-l...
The information that a pattern of firing in the output layer of a feedforward network of threshold-l...
The Hopfield model of a neural network is studied for p = αN, where p is the number of memorized pat...
We analyze the average performance of a general class of learning algorithms for the nondeterministi...
We study the stability of the replica-symmetric solution for a perceptron learning from examples. By...
Error rates of a Boolean perceptron with threshold and either spherical or Ising constraint on the w...
The storage capacity of multilayer networks with overlapping receptive fields is investigated for a ...
We consider the mean field theory of optimally pruned perceptrons. Using the cavity method, microsco...
International audienceWe study the problem of determining the capacity of the binary perceptron for ...
In this three-sections lecture cavity method is introduced as heuristic framework from a Physics per...