Neural network approach has proven to be a universal approximator for nonlinear continuous functions with an arbitrary accuracy. It has been found to be very successful for various learning and prediction tasks. However, supervised learning using neural networks has some limitations because of the black box nature of their solutions, experimental network parameter selection, danger of overfitting, and convergence to local minima instead of global minima. In certain applications, the fixed neural network structures do not address the effect on the performance of prediction as the number of available data increases. Three new approaches are proposed with respect to these limitations of supervised learning using neural networks in order to imp...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Abstract—This paper presents dynamic voltage collapse prediction on an actual power system us...
Neural network approach has proven to be a universal approximator for nonlinear continuous functions...
The importance of the problem of designing learning machines rests on the promise of one day deliver...
Dynamic branch prediction in high-performance processors is a specific instance of a general time se...
Neural networks have been successfully used to model a number of complex nonlinear systems. Althoug...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
This paper proposes two new training algorithms for multilayer perceptrons based on evolutionary com...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
Abstract. In this paper we address the important problem of optimizing regularization parameters in ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
In this paper we investigate the effective design of an appropriate neural network model for time se...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Abstract—This paper presents dynamic voltage collapse prediction on an actual power system us...
Neural network approach has proven to be a universal approximator for nonlinear continuous functions...
The importance of the problem of designing learning machines rests on the promise of one day deliver...
Dynamic branch prediction in high-performance processors is a specific instance of a general time se...
Neural networks have been successfully used to model a number of complex nonlinear systems. Althoug...
Artificial neural networks (NNs) are widely used in modeling and forecasting time series. Since most...
This paper proposes two new training algorithms for multilayer perceptrons based on evolutionary com...
New technologies in engineering, physics and biomedicine are demanding increasingly complex methods ...
Abstract. In this paper we address the important problem of optimizing regularization parameters in ...
In this thesis, artificial neural networks (ANNs) are used for prediction of financial and macroecon...
The analysis of a time series is a problem well known to statisticians. Neural networks form the bas...
This dissertation presents a new strategy for the automatic design of neural networks. The learning ...
In this paper we investigate the effective design of an appropriate neural network model for time se...
The field of neural networks is a wide and diverse field which spans a variety of interests, modelli...
The focus of this paper is on the neural network modelling approach that has gained increasing recog...
Abstract—This paper presents dynamic voltage collapse prediction on an actual power system us...