The dynamics of an-line learning is investigated for structurally unrealizable tasks in the context of two-layer neural networks with an arbitrary number of hidden neurons. Within a statistical mechanics framework a closed set of differential equations describing the learning dynamics can be derived, for the general case of unrealizable isotropic tacks. In the asymptotic regime one can solve the dynamics analytically in the limit of a large number of hidden neurons, providing an analytical expression for the residual generalization error, the optimal and critical asymptotic training parameters, and the corresponding prefactor of the generalization error deca
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
Asymptotic behavior of the online gradient algorithm with a constant step size employed for learning...
The dynamics of supervised learning in layered neural networks were studied in the regime where the ...
The dynamics of an-line learning is investigated for structurally unrealizable tasks in the context ...
We solve the dynamics of on-line Hebbian learning in perceptrons exactly, for the regime where the s...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
We study the dynamics of on-line learning in multilayer neural networks where training examples are ...
We analyse the dynamics of on-line learning in multilayer neural networks where training examples ar...
In this paper we review recent theoretical approaches for analysing the dynamics of on-line learning...
We study the dynami s of on-line learning in multilayer neural networks where training examples are ...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
We analyse the dynamics of a number of second order on-line learning algorithms training multi-layer...
Tag der mündlichen Prüfung: One of the most important features of natural as well as artificial ne...
We introduce exact macroscopic on-line learning dynamics of two-layer neural networks with ReLU unit...
The problem of learning from examples in multilayer networks is studied within the framework of stat...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
Asymptotic behavior of the online gradient algorithm with a constant step size employed for learning...
The dynamics of supervised learning in layered neural networks were studied in the regime where the ...
The dynamics of an-line learning is investigated for structurally unrealizable tasks in the context ...
We solve the dynamics of on-line Hebbian learning in perceptrons exactly, for the regime where the s...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
We study the dynamics of on-line learning in multilayer neural networks where training examples are ...
We analyse the dynamics of on-line learning in multilayer neural networks where training examples ar...
In this paper we review recent theoretical approaches for analysing the dynamics of on-line learning...
We study the dynami s of on-line learning in multilayer neural networks where training examples are ...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
We analyse the dynamics of a number of second order on-line learning algorithms training multi-layer...
Tag der mündlichen Prüfung: One of the most important features of natural as well as artificial ne...
We introduce exact macroscopic on-line learning dynamics of two-layer neural networks with ReLU unit...
The problem of learning from examples in multilayer networks is studied within the framework of stat...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
Asymptotic behavior of the online gradient algorithm with a constant step size employed for learning...
The dynamics of supervised learning in layered neural networks were studied in the regime where the ...