Abstract—The response of a multilayered perceptron (MLP) network on points which are far away from the boundary of its training data is generally never reliable. Ideally a network should not respond to data points which lie far away from the boundary of its training data. We propose a new training scheme for MLPs as classifiers, which ensures this. Our training scheme involves training subnets for each class present in the training data. Each subnet can decide whether a data point belongs to a certain class or not. Training each subnet requires data from the class which the subnet represents along with some points outside the boundary of that class. For this purpose we propose an easy but approximate method to generate points outside the bo...
Neural networks, particularly Multilayer Pereceptrons (MLPs) have been found to be successful for va...
We address the issue of learning multi-layered perceptrons (MLPs) in a discriminative, inductive, mu...
This paper presents a novel approach for query based neural network learning. Consider a layered per...
Abstract. Typically the response of a multilayered perceptron (MLP) network on points which are far ...
Abstract — A method to improve the generalization ability of a multilayered perceptron (MLP) network...
There are a lot of extensions made to the classic model of multi-layer perceptron (MLP). A notable a...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
The back-propagation algorithm is mainly used for mul-tilayer perceptrons. This algorithm is, howeve...
Supervised Learning in Multi-Layered Neural Networks (MLNs) has been recently proposed through the w...
This paper presents two compensation methods for multilayer perceptrons (MLPs) which are very diffic...
feed-forward multilayer neural network is a generalisation of the single layer perceptron topology. ...
The back-propagation algorithm is mainly used for multilayer perceptrons. This algorithm is, however...
金沢大学大学院自然科学研究科知能情報・数理A training data selection method is proposed for multilayer neural networks (ML...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
Neural networks, particularly Multilayer Pereceptrons (MLPs) have been found to be successful for va...
We address the issue of learning multi-layered perceptrons (MLPs) in a discriminative, inductive, mu...
This paper presents a novel approach for query based neural network learning. Consider a layered per...
Abstract. Typically the response of a multilayered perceptron (MLP) network on points which are far ...
Abstract — A method to improve the generalization ability of a multilayered perceptron (MLP) network...
There are a lot of extensions made to the classic model of multi-layer perceptron (MLP). A notable a...
Ellerbrock TM. Multilayer neural networks : learnability, network generation, and network simplifica...
The back-propagation algorithm is mainly used for mul-tilayer perceptrons. This algorithm is, howeve...
Supervised Learning in Multi-Layered Neural Networks (MLNs) has been recently proposed through the w...
This paper presents two compensation methods for multilayer perceptrons (MLPs) which are very diffic...
feed-forward multilayer neural network is a generalisation of the single layer perceptron topology. ...
The back-propagation algorithm is mainly used for multilayer perceptrons. This algorithm is, however...
金沢大学大学院自然科学研究科知能情報・数理A training data selection method is proposed for multilayer neural networks (ML...
Multilayer perceptrons (MLPs) (1) are the most common artificial neural networks employed in a large...
Abstract- We propose a novel learning algorithm to train networks with multi-layer linear-threshold ...
Neural networks, particularly Multilayer Pereceptrons (MLPs) have been found to be successful for va...
We address the issue of learning multi-layered perceptrons (MLPs) in a discriminative, inductive, mu...
This paper presents a novel approach for query based neural network learning. Consider a layered per...