We present a new method for obtaining the response function G and its average G from which most of the properties of learning and generalization in linear perceptrons can be derived. We first rederive the known results for the `thermodynamic limit' of infinite perceptron size N and show explicitly that G is self-averaging in this limit. We then discuss extensions of our method to more general learning scenarios with anisotropic teacher space priors, input distributions, and weight decay terms. Finally, we use our method to calculate the finite N corrections of order 1=N to G and discuss the corresponding finite size effects on generalization and learning dynamics. An important spin-off is the observation that results obtaine...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
An input-output map in which the patterns are divided into classes is considered for the perceptron....
We first show the self-averaging property in the sense of almost sure convergence for the free energ...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
We study the evolution of the generalization ability of a simple linear per-ceptron with N inputs wh...
. -- We analyse online (gradient descent) learning of a rule from a finite set of training examples ...
Zero temperature Gibbs learning is considered for a connected committee machine with K hidden units....
We complement recent advances in thermodynamic limit analyses of mean on-line gradient descent learn...
We study on-line learning of a linearly separable rule with a simple perceptron. Training utilizes a...
AbstractWe study in detail the behavior of some known learning algorithms. We estimate the sum of th...
This paper provides a time-domain feedback analysis of the perceptron learning algorithm. It studies...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
Tag der mündlichen Prüfung: One of the most important features of natural as well as artificial ne...
We solve the dynamics of on-line Hebbian learning in perceptrons exactly, for the regime where the s...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
An input-output map in which the patterns are divided into classes is considered for the perceptron....
We first show the self-averaging property in the sense of almost sure convergence for the free energ...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
Learning algorithms for perceptrons are deduced from statistical mechanics. Thermodynamical quantiti...
We study the evolution of the generalization ability of a simple linear per-ceptron with N inputs wh...
. -- We analyse online (gradient descent) learning of a rule from a finite set of training examples ...
Zero temperature Gibbs learning is considered for a connected committee machine with K hidden units....
We complement recent advances in thermodynamic limit analyses of mean on-line gradient descent learn...
We study on-line learning of a linearly separable rule with a simple perceptron. Training utilizes a...
AbstractWe study in detail the behavior of some known learning algorithms. We estimate the sum of th...
This paper provides a time-domain feedback analysis of the perceptron learning algorithm. It studies...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
Tag der mündlichen Prüfung: One of the most important features of natural as well as artificial ne...
We solve the dynamics of on-line Hebbian learning in perceptrons exactly, for the regime where the s...
Generating functionals may guide the evolution of a dynamical system and constitute a possible route...
An input-output map in which the patterns are divided into classes is considered for the perceptron....
We first show the self-averaging property in the sense of almost sure convergence for the free energ...