A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to the technique of principal component analysis. The latter is performed with respect to a correlation matrix computed from the example inputs and their target outputs. Typical properties of the training procedure are investigated by means of a statistical physics analysis in models of learning regression and classification tasks. We demonstrate that the procedure requires by far fewer examples for good generalization than traditional online training. For networks with a large number of hidden units we derive the training prescription which achieves, within our model, the optimal generalization behavior
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
The back-propagation algorithm is mainly used for mul-tilayer perceptrons. This algorithm is, howeve...
The Multi-Layer Perceptron (MLP) is one of the most widely applied and researched Artificial Neural ...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
We present a training algorithm for multilayer perceptrons which relates to the technique of princip...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A learning algorithm for multilayer perceptrons is presented which is based on finding the principal...
Abstract. Principal component analysis allows the identification of a linear transformation such tha...
This paper is concerned with the use of scientific visualization methods for the analysis of feedfor...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
We present a new algorithm for eliminating excess parameters and improving network generalization af...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
The back-propagation algorithm is mainly used for mul-tilayer perceptrons. This algorithm is, howeve...
The Multi-Layer Perceptron (MLP) is one of the most widely applied and researched Artificial Neural ...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
We present a training algorithm for multilayer perceptrons which relates to the technique of princip...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
A learning algorithm for multilayer perceptrons is presented which is based on finding the principal...
Abstract. Principal component analysis allows the identification of a linear transformation such tha...
This paper is concerned with the use of scientific visualization methods for the analysis of feedfor...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
We present a new algorithm for eliminating excess parameters and improving network generalization af...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
This thesis addresses the issue of applying a "globally" convergent optimization scheme to the train...
The back-propagation algorithm is mainly used for mul-tilayer perceptrons. This algorithm is, howeve...
The Multi-Layer Perceptron (MLP) is one of the most widely applied and researched Artificial Neural ...