We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) using radial basis functions (RBFs) and sigmoid functions in the hidden layer. We use a modified attribute-class correlation measure to determine the weights of attributes in the networks. Moreover, we propose new weights called as influence weights to utilize in the weights connecting the input layer and the hidden layer nodes (hidden weights) of the network with sigmoid hidden nodes. These weights are calculated as the sum of conditional probabilities of attribute values given class labels. Our learning procedure of the networks is based on the extreme learning machines; in which the parameters of the hidden nodes are first calculated and the...
This study highlights on the subject of weight initialization in multi-layer feed-forward networks....
. We study symmetries of feedforward networks in terms of their corresponding groups and find that t...
This paper proposes a learning framework for single-hidden layer feedforward neural networks (SLFN) ...
We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) us...
AbstractWe propose a binary classifier based on the single hidden layer feedforward neural network (...
This study high lights on the subject of weight initialization in back-propagation feed-forward netw...
In this paper, a new robust single-hidden layer feedforward network (SLFN)-based pattern classifier ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
Neural networks have been massively used in regression problems due to their ability to approximate ...
A robust training algorithm for a class of single-hidden layer feedforward neural networks (SLFNs) w...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
In this paper, we propose a hybrid learning algorithm for the single hidden layer feedforward neural...
We present a neural network architecture and a training algorithm designed to enable very rapid trai...
In this report we discuss the use of two simple classifiers to initialise the input-to-hidden layer ...
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....
. We study symmetries of feedforward networks in terms of their corresponding groups and find that t...
This paper proposes a learning framework for single-hidden layer feedforward neural networks (SLFN) ...
We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) us...
AbstractWe propose a binary classifier based on the single hidden layer feedforward neural network (...
This study high lights on the subject of weight initialization in back-propagation feed-forward netw...
In this paper, a new robust single-hidden layer feedforward network (SLFN)-based pattern classifier ...
In big data fields, with increasing computing capability, artificial neural networks have shown grea...
Neural networks have been massively used in regression problems due to their ability to approximate ...
A robust training algorithm for a class of single-hidden layer feedforward neural networks (SLFNs) w...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
In this paper, we propose a hybrid learning algorithm for the single hidden layer feedforward neural...
We present a neural network architecture and a training algorithm designed to enable very rapid trai...
In this report we discuss the use of two simple classifiers to initialise the input-to-hidden layer ...
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....
. We study symmetries of feedforward networks in terms of their corresponding groups and find that t...
This paper proposes a learning framework for single-hidden layer feedforward neural networks (SLFN) ...