We propose a novel method to capture data points near decision boundary in neural network that are often referred to a specific type of uncertainty. In our approach, we sought to perform uncertainty estimation based on the idea of adversarial attack method. In this paper, uncertainty estimates are derived from the input perturbations, unlike previous studies that provide perturbations on the model’s parameters as in Bayesian approach. We are able to produce uncertainty with couple of perturbations on the inputs. Interestingly, we apply the proposed method to datasets derived from blockchain. We compare the performance of model uncertainty with the most recent uncertainty methods. We show that the proposed method has revealed a signif...
Neural networks are an important and powerful family of models, but they have lacked practical ways ...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....
Model uncertainty has gained popularity in machine learning due to the overconfident predictions de...
Machine learning models are vulnerable to adversarial examples: minor perturbations to input samples...
Deep neural network (DNN) architectures are considered to be robust to random perturbations. Neverth...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
Since their inception, machine learning methods have proven useful, and their usability continues to...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
This paper proposes a new framework that combines Bayesian SegNet with adversarial learning to obtai...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Deep neural networks are often ignorant about what they do not know and overconfident when they make...
Abstract Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimension...
Deep learning is becoming increasingly relevant for many high-stakes applications such as autonomous...
Inductive Venn-ABERS predictors (IVAPs) are a type of probabilistic predictors with the theoretical ...
Neural networks are an important and powerful family of models, but they have lacked practical ways ...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....
Model uncertainty has gained popularity in machine learning due to the overconfident predictions de...
Machine learning models are vulnerable to adversarial examples: minor perturbations to input samples...
Deep neural network (DNN) architectures are considered to be robust to random perturbations. Neverth...
This paper describes a robust and computationally feasible method to train and quantify the uncertai...
Since their inception, machine learning methods have proven useful, and their usability continues to...
In this paper we attempt to build upon past work on Interval Neural Networks, and provide a robust w...
This paper proposes a new framework that combines Bayesian SegNet with adversarial learning to obtai...
This paper proposes a fast and scalable method for uncertainty quantification of machine learning mo...
Deep neural networks are often ignorant about what they do not know and overconfident when they make...
Abstract Machine Learning is a powerful tool to reveal and exploit correlations in a multi-dimension...
Deep learning is becoming increasingly relevant for many high-stakes applications such as autonomous...
Inductive Venn-ABERS predictors (IVAPs) are a type of probabilistic predictors with the theoretical ...
Neural networks are an important and powerful family of models, but they have lacked practical ways ...
Assessing uncertainty is an important step towards ensuring the safety and reliability of machine le...
Understanding the uncertainty of a neural network's (NN) predictions is essential for many purposes....