The concept of trustworthy AI has gained widespread attention lately. One of the aspects relevant to trustworthy AI is robustness of ML models. In this study, we show how to probabilistically quantify robustness against naturally occurring distortions of input data for tree-based classifiers under the assumption that the natural distortions can be described by multivariate probability distributions that can be transformed to multivariate normal distributions. The idea is to extract the decision rules of a trained tree-based classifier, separate the feature space into non-overlapping regions and determine the probability that a data sample with distortion returns its predicted label. The approach is based on the recently introduced measure o...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
While prior research has proposed a plethora of methods that build neural classifiers robust against...
As NLP models achieved state-of-the-art performances over benchmarks and gained wide applications, i...
Correctly quantifying the robustness of machine learning models is a central aspect in judging their...
Risse N, Göpfert C, Göpfert JP. How to Compare Adversarial Robustness of Classifiers from a Global P...
Testing Machine Learning (ML) models and AI-Infused Applications (AIIAs), or systems that contain ML...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
International audienceThis paper investigates the theory of robustness against adversarial attacks. ...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
The problem of algorithmic bias in machine learning has recently gained a lot of attention due to it...
In safety-critical deep learning applications robustness measurement is a vital pre-deployment phase...
We focus on learning adversarially robust classifiers under a cost-sensitive scenario, where the pot...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
The lack of transparent output behavior is a significant source of mistrust in many of the currently...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
While prior research has proposed a plethora of methods that build neural classifiers robust against...
As NLP models achieved state-of-the-art performances over benchmarks and gained wide applications, i...
Correctly quantifying the robustness of machine learning models is a central aspect in judging their...
Risse N, Göpfert C, Göpfert JP. How to Compare Adversarial Robustness of Classifiers from a Global P...
Testing Machine Learning (ML) models and AI-Infused Applications (AIIAs), or systems that contain ML...
Machine learning is used for security purposes, to differ between the benign and the malicious. Wher...
Traditional machine learning operates under the assumption that training and testing data are drawn ...
International audienceThis paper investigates the theory of robustness against adversarial attacks. ...
In this paper we criticize the robustness measure traditionally employed to assess the performance o...
The problem of algorithmic bias in machine learning has recently gained a lot of attention due to it...
In safety-critical deep learning applications robustness measurement is a vital pre-deployment phase...
We focus on learning adversarially robust classifiers under a cost-sensitive scenario, where the pot...
Modern machine learning (ML) algorithms are being applied today to a rapidly increasing number of ta...
The lack of transparent output behavior is a significant source of mistrust in many of the currently...
Although machine learning has achieved great success in numerous complicated tasks, many machine lea...
While prior research has proposed a plethora of methods that build neural classifiers robust against...
As NLP models achieved state-of-the-art performances over benchmarks and gained wide applications, i...