We show that participating in federated learning can be detrimental to g...
Statistical measures for group fairness in machine learning reflect the ...
With the advent of fluent generative language models that can produce
co...
Unlearning has emerged as a technique to efficiently erase information o...
The privacy risks of machine learning models is a major concern when tra...
We introduce a new class of attacks on machine learning models. We show ...
Differential privacy analysis of randomized learning algorithms typicall...
The wide adoption and application of Masked language models (MLMs) on
se...
Natural language reflects our private lives and identities, making its
p...
How much does a given trained model leak about each individual data reco...
We model the dynamics of privacy loss in Langevin diffusion and extend i...
Algorithmic fairness and privacy are essential elements of trustworthy
m...
ML-as-a-service is gaining popularity where a cloud server hosts a train...
Deep learning models leak significant amounts of information about their...
When building machine learning models using sensitive data, organization...
Black-box machine learning models are used in critical decision-making
d...
Optimizing prediction accuracy can come at the expense of fairness. Towa...
Contact tracing is an essential tool in containing infectious diseases s...
Collaborative (federated) learning enables multiple parties to train a m...
Machine learning as a service (MLaaS), and algorithm marketplaces are on...
Can we trust black-box machine learning with its decisions? Can we trust...
Deep learning models are known to be vulnerable to various adversarial
m...
Models leak information about their training data. This enables attacker...
The arms race between attacks and defenses for machine learning models h...
Deep neural networks are susceptible to various inference attacks as the...
Machine learning models leak information about the datasets on which the...
Major cloud operators offer machine learning (ML) as a service, enabling...
Releasing full data records is one of the most challenging problems in d...
We quantitatively investigate how machine learning models leak informati...
We demonstrate that modern image recognition methods based on artificial...