This paper describes a robust and computationally feasible method to train and quantify the uncertainty of Neural Networks. Specifically, we propose a back propagation algorithm for Neural Networks with interval predictions. In order to maintain numerical stability we propose minimising the maximum of the batch of errors at each step. Our approach can accommodate incertitude in the training data, and therefore adversarial examples from a commonly used attack model can be trivially accounted for. We present results on a test function example, and a more realistic engineering test case. The reliability of the predictions of these networks is guaranteed by the non-convex Scenario approach to chance constrained optimisation, which takes place f...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
This paper presents a new approach to the problem of multiclass classification. The proposed approac...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Thesis version replaced on 6/14/2021 per request of the graduate office.Deep neural networks are bec...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Determining good initial conditions for an algorithm used to train a neural network is considered a ...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
We introduce the problem of training neural networks such that they are robust against a class of sm...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
We propose a novel method to capture data points near decision boundary in neural network that are ...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
This paper presents a new approach to the problem of multiclass classification. The proposed approac...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Thesis version replaced on 6/14/2021 per request of the graduate office.Deep neural networks are bec...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Determining good initial conditions for an algorithm used to train a neural network is considered a ...
Radial basis function neural networks were trained using both partially supervised and fully supervi...
We introduce the problem of training neural networks such that they are robust against a class of sm...
Two non-intrusive uncertainty propagation approaches are proposed for the performance analysis of en...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
We propose a novel method to capture data points near decision boundary in neural network that are ...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
While machine learning is traditionally a resource intensive task, embedded systems, autonomous navi...
This paper presents a new approach to the problem of multiclass classification. The proposed approac...
Uncertainty quantification plays a critical role in the process of decision making and optimization ...