Methods to speed up learning in back propagation and to optimize the network architecture have been recently studied. This paper shows how adaptation of the steepness of the sigmoids during learning treats these two topics in a common framework. The adaptation of the steepness of the sigmoids is obtained by gradient descent. The resulting learning dynamics can be simulated by a standard network with fixed sigmoids and a learning rule whose main component is a gradient descent with adaptive learning parameters. A law linking variation on the weights to variation on the steepness of the sigmoids is discovered. Optimization of units is obtained by introducing a tendency to decay to zero in the steepness values. This decay corresponds to a deca...
The most widely used algorithm for training multiplayer feedforward networks, Error BackPropagation ...
The problem of learning using connectionist networks, in which network connection strengths are modi...
Generalized delta rule, popularly known as back-propagation (BP) [9, 5] is probably one of the most ...
Methods to speed up learning in back propagation and to optimize the network architecture have been ...
Abstract — The back propagation algorithm has been successfully applied to wide range of practical p...
The back propagation algorithm has been successfully applied to wide range of practical problems. Si...
Back Propagation (BP) is commonly used algorithm that optimize the performance of network for traini...
Rumelhart, Hinton and Williams [Rumelhart et al. 86] describe a learning procedure for layered netwo...
The Back Propagation algorithm or its variation on Multilayered Feedforward Networks is widely used...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
The back propagation algorithm is one of the popular learning algorithms to train self learning feed...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
The most widely used algorithm for training multiplayer feedforward networks, Error BackPropagation ...
The problem of learning using connectionist networks, in which network connection strengths are modi...
Generalized delta rule, popularly known as back-propagation (BP) [9, 5] is probably one of the most ...
Methods to speed up learning in back propagation and to optimize the network architecture have been ...
Abstract — The back propagation algorithm has been successfully applied to wide range of practical p...
The back propagation algorithm has been successfully applied to wide range of practical problems. Si...
Back Propagation (BP) is commonly used algorithm that optimize the performance of network for traini...
Rumelhart, Hinton and Williams [Rumelhart et al. 86] describe a learning procedure for layered netwo...
The Back Propagation algorithm or its variation on Multilayered Feedforward Networks is widely used...
Backpropagation is a supervised learning algorithm for training multi-layer neural networks for func...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
The back propagation algorithm is one of the popular learning algorithms to train self learning feed...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
An adaptive back-propagation algorithm parameterized by an inverse temperature 1/T is studied and co...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
The most widely used algorithm for training multiplayer feedforward networks, Error BackPropagation ...
The problem of learning using connectionist networks, in which network connection strengths are modi...
Generalized delta rule, popularly known as back-propagation (BP) [9, 5] is probably one of the most ...