Uncertainty quantification plays a critical role in the process of decision making and optimization in many fields of science and engineering. The field has gained an overwhelming attention among researchers in recent years resulting in an arsenal of different methods. Probabilistic forecasting and in particular prediction intervals (PIs) are one of the techniques most widely used in the literature for uncertainty quantification. Researchers have reported studies of uncertainty quantification in critical applications such as medical diagnostics, bioinformatics, renewable energies, and power grids. The purpose of this survey paper is to comprehensively study neural network-based methods for construction of prediction intervals. It will cover...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Prediction intervals (PIs) are excellent tools for quantification of uncertainties associated with p...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
This thesis makes contributions to basic and fundamental research in the field of prediction interva...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
In this paper we propose a new methodology for evaluating prediction intervals (PIs). TypicallyAlmei...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
Abstract—We consider the task of performing prediction with neural networks on the basis of uncertai...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Since their inception, machine learning methods have proven useful, and their usability continues to...
On-line monitoring techniques have attracted increasing attention as a promising strategy for improv...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Prediction intervals (PIs) are excellent tools for quantification of uncertainties associated with p...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...
This thesis makes contributions to basic and fundamental research in the field of prediction interva...
The breakout success of deep neural networks (NNs) in the 2010's marked a new era in the quest to bu...
The complexity and level of uncertainty present in operation of power systems have significantly gro...
In this paper we propose a new methodology for evaluating prediction intervals (PIs). TypicallyAlmei...
On top of machine learning (ML) models, uncertainty quantification (UQ) functions as an essential la...
Abstract—We consider the task of performing prediction with neural networks on the basis of uncertai...
Uncertainty quantification (UQ) for predictions generated by neural networks (NNs) is of vital impor...
Since their inception, machine learning methods have proven useful, and their usability continues to...
On-line monitoring techniques have attracted increasing attention as a promising strategy for improv...
The application of interval set techniques to the quantification of uncertainty in a neural network ...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
The estimation and inference of human predictive uncertainty have great potential to improve the sam...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
Prediction intervals (PIs) are excellent tools for quantification of uncertainties associated with p...
A novel technique for the evaluation of neural network robustness against uncertainty using a nonpro...