Utilizing Class Separation Distance for the Evaluation of Corruption Robustness of Machine Learning Classifiers
Bibliografische Angaben
Titel: Utilizing Class Separation Distance for the Evaluation of Corruption Robustness of Machine Learning Classifiers.
in: The IJCAI-ECAI-22 Workshop on Artificial Intelligence Safety (AISafety 2022), 2022. Seiten: 1-10, Projektnummer: F 2497, DOI: 10.48550/arXiv.2206.13405