Pontificia Universidad Católica de Chile Pontificia Universidad Católica de Chile
(2016)

Statistical Query Algorithms for Mean Vector Estimation and Stochastic Convex Optimization

Revista : Symposium of Discrete Algorithms (SODA)
Tipo de publicación : Conferencia No DCC Ir a publicación

Abstract

Stochastic convex optimization, where the objective is the expectation of a random convex function, is an important and widely used method with numerous applications in machine learning, statistics, operations research and other areas. We study the complexity of stochastic convex optimization given only statistical query (SQ) access to the objective function. We show that well-known and popular first-order iterative methods can be implemented using only statistical queries. For many cases of interest we derive nearly matching upper and lower bounds on the estimation (sample) complexity including linear optimization in the most general setting. We then present several consequences for machine learning, differential privacy and proving concrete lower bounds on the power of convex optimization basedmethods.