A novel technique for the evaluation of neural network robustness against uncertainty using a nonprobabilistic approach is presented. Conventional optimization techniques were employed to train multilayer perceptron (MLP) networks, which were then probed with an uncertainty analysis using an information-gap model to quantify the network response to uncertainty in the input data. It is demonstrated that the best performing network on data with low uncertainty is not in general the optimal network on data with a higher degree of input uncertainty. Using the concepts of information-gap theory, this paper develops a theoretical framework for information-gap uncertainty applied to neural networks, and explores the practical application of the pr...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Machine learning has become a standard tool in computer vision. Nowadays, neural networks are one of...
International audienceWe quantify the robustness of a trained network to input uncertainties with a ...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
As a result of their black-box nature, neural networks resist traditional methods of certification a...
The application of neural network classifiers to a damage detection problem is discussed within a fr...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
Deep Neural Networks (DNNs) have proven excellent performance and are very successful in image class...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
A common question regarding the application of neural networks is whether the predictions of the mod...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Machine learning has become a standard tool in computer vision. Nowadays, neural networks are one of...
International audienceWe quantify the robustness of a trained network to input uncertainties with a ...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
As a result of their black-box nature, neural networks resist traditional methods of certification a...
The application of neural network classifiers to a damage detection problem is discussed within a fr...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
Deep Neural Networks (DNNs) have proven excellent performance and are very successful in image class...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Suppose data-driven black-box models, e.g., neural networks, should be used as components in safety-...
A common question regarding the application of neural networks is whether the predictions of the mod...
IEEE Neural networks (NNs) are now routinely implemented on systems that must operate in uncertain e...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
We present a new approach to assessing the robustness of neural networks based on estimating the pro...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Machine learning has become a standard tool in computer vision. Nowadays, neural networks are one of...
International audienceWe quantify the robustness of a trained network to input uncertainties with a ...