Linear models were trained on a simple two-class two-dimensional data set. The network connections, which were crisp, real numbers, were then replaced with interval ranges of real numbers. Crisp input data was propagated through these uncertain-weighted networks to give interval ranges on the output values. The classification rates of the networks could be adjusted by the level of uncertainty in the connections, allowing the user to specify an acceptable misclassification rate and choosing the network with the best corresponding correct classification rate. Vertex propagation, interval arithmetic and affine arithmetic were used to represent the uncertainty in networks with linear and softmax output activation functions and were benchmarked ...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
Abstract:- This paper presents a new approach to the problem of multiclass classification. The propo...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
In many real applications that use and analyze networked data, the links in the network graph may be...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
Determining good initial conditions for an algorithm used to train a neural network is considered a ...
This paper elaborates on the modeling and simulation of complex systems involving uncertainty. More ...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
Abstract. Imprecision, incompleteness and dynamic exist in wide range of net-work applications. It i...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
Abstract:- This paper presents a new approach to the problem of multiclass classification. The propo...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
This paper considers the performance of radial basis function neural networks for the purpose of dat...
In many real applications that use and analyze networked data, the links in the network graph may be...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
Determining good initial conditions for an algorithm used to train a neural network is considered a ...
This paper elaborates on the modeling and simulation of complex systems involving uncertainty. More ...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
We consider a network design and expansion problem, where we need to make a capacity investment now,...
Classification of high dimensional data finds wide-ranging applications. In many of these applicatio...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
Abstract. Imprecision, incompleteness and dynamic exist in wide range of net-work applications. It i...
Radial Basis Function (RBF) networks are examples of a versatile artificial neural network paradigm ...
Abstract:- This paper presents a new approach to the problem of multiclass classification. The propo...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...