This study high lights on the subject of weight initialization in back-propagation feed-forward networks. Training data is analyzed and the notion of critical points is introduced for determining the initial weights and the number of hidden units. The proposed method has been applied to artificial data and the publicly available cancer database. The experimental outcomes indicate that the proposed method reduces training time and results in better solution
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
In this report we discuss the use of two simple classifiers to initialise the input-to-hidden layer ...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
A method has been proposed for weight initialization in back-propagation feed-forward networks. Trai...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
During training one of the most important factor is weight initialization that affects the training ...
AbstractWe propose a binary classifier based on the single hidden layer feedforward neural network (...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) us...
The back propagation algorithm caused a tremendous breakthrough in the application of multilayer per...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons andCon...
This paper proposes an initialization of back propaga-tion (BP) networks for pattern classification ...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
In this report we discuss the use of two simple classifiers to initialise the input-to-hidden layer ...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...
A method has been proposed for weight initialization in back-propagation feed-forward networks. Trai...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
During training one of the most important factor is weight initialization that affects the training ...
AbstractWe propose a binary classifier based on the single hidden layer feedforward neural network (...
Abstracf- Proper initialization of neural networks is critical for a successful training of its weig...
We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) us...
The back propagation algorithm caused a tremendous breakthrough in the application of multilayer per...
A new method of initializing the weights in deep neural networks is proposed. The method follows two...
In this paper, a novel data-driven method for weight initialization of Multilayer Perceptrons andCon...
This paper proposes an initialization of back propaga-tion (BP) networks for pattern classification ...
In recent years, multi-layer feedforward neural networks have been popularly used for pattern classi...
Neural network is a machine learning algorithm that has been studied since the mid-1900s, Recently, ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
In this report we discuss the use of two simple classifiers to initialise the input-to-hidden layer ...
Forecasting, classification, and data analysis may all gain from improved pattern recognition result...