Abstract—The relation between classifier complexity and learning set size is very important in discriminant analysis. One of the ways to overcome the complexity control problem is to add noise to the training objects, increasing in this way the size of the training set. Both the amount and the directions of noise injection are important factors which determine the effectiveness for classi-fier training. In this paper the effect is studied of the injection of Gaussian spherical noise and-nearest neighbors directed noise on the performance of multilayer perceptrons. As it is impossible to provide an analytical investigation for multilayer perceptrons, a theoretical analysis is made for statistical classifiers. The goal is to get a better unde...
The training of multilayered neural networks in the presence of different types of noise is studied...
Recurrent perceptron classifiers generalize the classical perceptron model. They take into account t...
Injecting weight noise during training is a simple technique that has been proposed for almost two d...
In this paper, we show that noise injection into inputs in unsupervised learning neural networks doe...
Noise Injection consists in adding noise to the inputs during neural network training. Experimental ...
In this paper, we address the issue of learning nonlinearly separable concepts with a kernel classif...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
Deep Learning (read neural networks) has emerged as one of the most exciting and powerful tools in t...
We analyse the effects of analog noise on the synaptic arithmetic during MultiLayer Perceptron train...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
International audienceIt has been shown that, when used for pattern recognition with supervised lear...
In this report we investigate the effects of integrating techniques and methods that tolerate noise...
Speech Recognition is truly challenging task due to the presence of ambient noise. Ambient noise can...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
The training of multilayered neural networks in the presence of different types of noise is studied...
Recurrent perceptron classifiers generalize the classical perceptron model. They take into account t...
Injecting weight noise during training is a simple technique that has been proposed for almost two d...
In this paper, we show that noise injection into inputs in unsupervised learning neural networks doe...
Noise Injection consists in adding noise to the inputs during neural network training. Experimental ...
In this paper, we address the issue of learning nonlinearly separable concepts with a kernel classif...
AbstractThis paper presents average-case analyses of instance-based learning algorithms. The algorit...
Machine learning techniques often have to deal with noisy data, which may affect the accuracy of the...
Deep Learning (read neural networks) has emerged as one of the most exciting and powerful tools in t...
We analyse the effects of analog noise on the synaptic arithmetic during MultiLayer Perceptron train...
This paper presents a novel approach to the analysis of the overtraining phenomenon in pattern class...
International audienceIt has been shown that, when used for pattern recognition with supervised lear...
In this report we investigate the effects of integrating techniques and methods that tolerate noise...
Speech Recognition is truly challenging task due to the presence of ambient noise. Ambient noise can...
A training algorithm for multilayer perceptrons is discussed and studied in detail, which relates to...
The training of multilayered neural networks in the presence of different types of noise is studied...
Recurrent perceptron classifiers generalize the classical perceptron model. They take into account t...
Injecting weight noise during training is a simple technique that has been proposed for almost two d...