We study differentially private stochastic optimization in convex and non-convex settings. For the convex case, we focus on the family of non-smooth generalized linear losses (GLLs). Our algorithm for the $\ell_2$ setting achieves optimal excess population risk in near-linear time, while the best known differentially private algorithms for general convex losses run in super-linear time. Our algorithm for the $\ell_1$ setting has nearly-optimal excess population risk $\tilde{O}\big(\sqrt{\frac{\log{d}}{n\varepsilon}}\big)$, and circumvents the dimension dependent lower bound of \cite{Asi:2021} for general non-smooth convex losses. In the differentially private non-convex setting, we provide several new algorithms for approximating stationary...
Stochastic gradient descent ascent (SGDA) and its variants have been the workhorse for solving minim...
This paper deals with a natural stochastic optimization procedure derived from the so-called Heavy-b...
This book investigates convex multistage stochastic programs whose objective and constraint function...
Differentially private (DP) stochastic convex optimization (SCO) is a fundamental problem, where the...
We study stochastic convex optimization with heavy-tailed data under the constraint of differential ...
We study the problem of $(\epsilon,\delta)$-differentially private learning of linear predictors wit...
In this paper, we study the Differentially Private Empirical Risk Minimization (DP-ERM) problem with...
In this paper, we initiate a systematic investigation of differentially private algorithms for conve...
In this paper, we study private optimization problems for non-smooth convex functions $F(x)=\mathbb{...
In this paper, we study the problem of differen-tially private risk minimization where the goal is t...
Abstract Convex risk minimization is a commonly used setting in learning theory. In this paper, we f...
In this paper we revisit the problem of differentially private empirical risk minimization (DP-ERM) ...
This dissertation presents several contributions at the interface of methods for convex optimization...
In this paper, we propose differentially private algorithms for the problem of stochastic linear ban...
We consider the solution of a stochastic convex optimization problem E [ f (x;θ ∗,ξ)] in x over a cl...
Stochastic gradient descent ascent (SGDA) and its variants have been the workhorse for solving minim...
This paper deals with a natural stochastic optimization procedure derived from the so-called Heavy-b...
This book investigates convex multistage stochastic programs whose objective and constraint function...
Differentially private (DP) stochastic convex optimization (SCO) is a fundamental problem, where the...
We study stochastic convex optimization with heavy-tailed data under the constraint of differential ...
We study the problem of $(\epsilon,\delta)$-differentially private learning of linear predictors wit...
In this paper, we study the Differentially Private Empirical Risk Minimization (DP-ERM) problem with...
In this paper, we initiate a systematic investigation of differentially private algorithms for conve...
In this paper, we study private optimization problems for non-smooth convex functions $F(x)=\mathbb{...
In this paper, we study the problem of differen-tially private risk minimization where the goal is t...
Abstract Convex risk minimization is a commonly used setting in learning theory. In this paper, we f...
In this paper we revisit the problem of differentially private empirical risk minimization (DP-ERM) ...
This dissertation presents several contributions at the interface of methods for convex optimization...
In this paper, we propose differentially private algorithms for the problem of stochastic linear ban...
We consider the solution of a stochastic convex optimization problem E [ f (x;θ ∗,ξ)] in x over a cl...
Stochastic gradient descent ascent (SGDA) and its variants have been the workhorse for solving minim...
This paper deals with a natural stochastic optimization procedure derived from the so-called Heavy-b...
This book investigates convex multistage stochastic programs whose objective and constraint function...