Prediction intervals offer a means of assessing the uncertainty of artificial neural networks’ point predictions. In this work, we propose a hybrid approach for constructing prediction intervals, combining the Bootstrap method with a direct approximation of lower and upper error bounds. The main objective is to construct high-quality prediction intervals – combining high coverage probability for future observations with small and thus informative interval widths – even when sparse data is available. The approach is extended to adaptive approximation, whereby an online learning scheme is proposed to iteratively update prediction intervals based on recent measurements, requiring a reduced computational cost compared to offline approximation. ...
In this paper we propose a new methodology for evaluating prediction intervals (PIs). TypicallyAlmei...
With rapid adoption of deep learning in critical applications, the question of when and how much to ...
Prediction intervals are a machine- and human-interpretable way to represent predictive uncertainty ...
The bootstrap method is one of the most widely used methods in literature for construction of confid...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
This thesis makes contributions to basic and fundamental research in the field of prediction interva...
This brief proposes an efficient technique for the construction of optimized prediction intervals (P...
The aim of this paper is to propose a novel prediction model based on an ensemble of deep neural net...
Artificial neural networks (ANNs) are popular tools for accomplishing many machine learning tasks, i...
Neural networks can be viewed as nonlinear models, where the weights are parameters to be estimated....
Abstract- A rich literature discussing techniques for adopting neural networks for metamodelling of ...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
Abstract—We consider the task of performing prediction with neural networks on the basis of uncertai...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
In this paper we propose a new methodology for evaluating prediction intervals (PIs). TypicallyAlmei...
With rapid adoption of deep learning in critical applications, the question of when and how much to ...
Prediction intervals are a machine- and human-interpretable way to represent predictive uncertainty ...
The bootstrap method is one of the most widely used methods in literature for construction of confid...
Abstract: Neural networks are a consistent example of non-parametric estimation, with powerful unive...
This thesis makes contributions to basic and fundamental research in the field of prediction interva...
This brief proposes an efficient technique for the construction of optimized prediction intervals (P...
The aim of this paper is to propose a novel prediction model based on an ensemble of deep neural net...
Artificial neural networks (ANNs) are popular tools for accomplishing many machine learning tasks, i...
Neural networks can be viewed as nonlinear models, where the weights are parameters to be estimated....
Abstract- A rich literature discussing techniques for adopting neural networks for metamodelling of ...
This paper considers the generation of prediction intervals (PIs) by neural networks for quantifying...
We argue that prediction intervals based on predictive likelihood do not correct for curvature with ...
Abstract—We consider the task of performing prediction with neural networks on the basis of uncertai...
Accurate uncertainty quantification is necessary to enhance the reliability of deep learning models ...
In this paper we propose a new methodology for evaluating prediction intervals (PIs). TypicallyAlmei...
With rapid adoption of deep learning in critical applications, the question of when and how much to ...
Prediction intervals are a machine- and human-interpretable way to represent predictive uncertainty ...