Robustness guarantees for Bayesian neural networks (invited extended abstract of a keynote speaker)

Bayesian neural networks (BNNs), a family of neural networks with a probability distribution placed on their weights, have the advantage of being able to reason about uncertainty in their predictions as well as data. Their deployment in safety-critical applications demands rigorous robustness guaran...

Fuld beskrivelse

Bibliografiske detaljer
Hovedforfatter: Kwiatkowska, M
Format: Conference item
Sprog:English
Udgivet: Springer 2022
Beskrivelse
Summary:Bayesian neural networks (BNNs), a family of neural networks with a probability distribution placed on their weights, have the advantage of being able to reason about uncertainty in their predictions as well as data. Their deployment in safety-critical applications demands rigorous robustness guarantees. This paper summarises recent progress in developing algorithmic methods to ensure certifiable safety and robustness guarantees for BNNs, with the view to support design automation for systems incorporating BNN components.