This paper considers two related issues regarding feedforward Neural Networks (NNs). The first involves the question of whether the network weights corresponding to the best fitting network are unique. Our empirical tests suggest an answer in the negative, whether using standard Backpropagation algorithm or our preferred direct (non-gradient-based) search procedure. We also offer a theoretical analysis which suggests that there will almost inevitably be functional relationships between network weights. The second issue concerns the use of standard statistical approaches to testing the significance of weights or groups of weights. Treating feedforward NNs as an interesting way to carry out nonlinear regression suggests that statistical tests...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
Classification is one of the most hourly encountered problems in real world. Neural networks have em...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
Feedforward neural networks trained by error backpropagation are examples of nonparametric regressio...
A statistically-based algorithm for pruning weights from feed-forward networks is presented. This a...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
Feed-forward neural networks have recently been applied in situations where an analysis based on the...
Neural networks are being used as tools for data analysis in a variety of applications. Neural netwo...
Thesis (M.Sc.)-University of Natal, Pietermaritzburg, 2000.The most commonly used applications of hi...
In this study, we focus on feed-forward neural networks with a single hidden layer. The research tou...
We develop, in the context of discriminant analysis, a general approach to the design of neural arch...
Feedforward neural networks trained by error backpropagation are ex-amples of nonparametric regressi...
The comparative accuracy of feedforward neural networks (NN) when applied to time series forecasting...
In most applications dealing with learning and pattern recognition, neural nets are employed as mode...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
Classification is one of the most hourly encountered problems in real world. Neural networks have em...
This paper considers two related issues regarding feedforward Neural Networks (NNs). The first invol...
Feedforward neural networks trained by error backpropagation are examples of nonparametric regressio...
A statistically-based algorithm for pruning weights from feed-forward networks is presented. This a...
A la suite de la conférence ESANN 2000.International audienceBootstrap techniques (also called resam...
Feed-forward neural networks have recently been applied in situations where an analysis based on the...
Neural networks are being used as tools for data analysis in a variety of applications. Neural netwo...
Thesis (M.Sc.)-University of Natal, Pietermaritzburg, 2000.The most commonly used applications of hi...
In this study, we focus on feed-forward neural networks with a single hidden layer. The research tou...
We develop, in the context of discriminant analysis, a general approach to the design of neural arch...
Feedforward neural networks trained by error backpropagation are ex-amples of nonparametric regressi...
The comparative accuracy of feedforward neural networks (NN) when applied to time series forecasting...
In most applications dealing with learning and pattern recognition, neural nets are employed as mode...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
Classification is one of the most hourly encountered problems in real world. Neural networks have em...