There are many existing differentially private algorithms for releasing
...
In many practical applications of differential privacy, practitioners se...
We study a new privacy model where users belong to certain sensitive gro...
There is a disconnect between how researchers and practitioners handle
p...
Composition is a key feature of differential privacy. Well-known advance...
We generalize the continuous observation privacy setting from Dwork et a...
We describe the privatization method used in reporting labor market insi...
Differential privacy (DP) provides rigorous privacy guarantees on
indivi...
We present a privacy system that leverages differential privacy to prote...
Composition is one of the most important properties of differential priv...
We design a general framework for answering adaptive statistical queries...
We study the problem of top-k selection over a large domain universe
sub...
We develop lower bounds for estimation under local privacy
constraints--...
Federated learning has become an exciting direction for both research an...
This work provides tight upper- and lower-bounds for the problem of mean...