We introduce exact macroscopic on-line learning dynamics of two-layer neural networks with ReLU units in the form of a system of differential equations, using techniques borrowed from statistical physics. For the first experiments, numerical solutions reveal similar behavior compared to sigmoidal activation researched in earlier work. In these experiments the theoretical results show good correspondence with simulations. In ove-rrealizable and unrealizable learning scenarios, the learning behavior of ReLU networks shows distinctive characteristics compared to sigmoidal networks
Equilibrium states of large layered neural networks with differentiable activation function and a si...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
We introduce exact macroscopic on-line learning dynamics of two-layer neural networks with ReLU unit...
By applying concepts from the statistical physics of learning, we study layered neural networks of r...
In this paper we review recent theoretical approaches for analysing the dynamics of on-line learning...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
The dynamics of an-line learning is investigated for structurally unrealizable tasks in the context ...
The increasing computational power and the availability of data have made it possible to train ever-...
We analyse the dynamics of on-line learning in multilayer neural networks where training examples ar...
Equilibrium states of large layered neural networks with differentiable activation function and a si...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
The statistical physics of disordered systems provides tools for the investigation of learning proce...
We introduce exact macroscopic on-line learning dynamics of two-layer neural networks with ReLU unit...
By applying concepts from the statistical physics of learning, we study layered neural networks of r...
In this paper we review recent theoretical approaches for analysing the dynamics of on-line learning...
We introduce and discuss the application of statistical physics concepts in the context of on-line m...
tems, quantum biology, and relevant aspects of thermodynamics, information theory, cybernetics, and ...
The dynamics of an-line learning is investigated for structurally unrealizable tasks in the context ...
The increasing computational power and the availability of data have made it possible to train ever-...
We analyse the dynamics of on-line learning in multilayer neural networks where training examples ar...
Equilibrium states of large layered neural networks with differentiable activation function and a si...
We study on-line gradient-descent learning in multilayer networks analytically and numerically. The ...
The statistical physics of disordered systems provides tools for the investigation of learning proce...