Conservative Stochastic Optimization with Expectation Constraints

08/13/2020
by   Zeeshan Akhtar, et al.
0

This paper considers stochastic convex optimization problems where the objective and constraint functions involve expectations with respect to the data indices or environmental variables, in addition to deterministic convex constraints on the domain of the variables. Although the setting is generic and arises in different machine learning applications, online and efficient approaches for solving such problems have not been widely studied. Since the underlying data distribution is unknown a priori, a closed-form solution is generally not available, and classical deterministic optimization paradigms are not applicable. State-of-the-art approaches, such as those using the saddle point framework, can ensure that the optimality gap as well as the constraint violation decay as Ø(T^-1/2) where T is the number of stochastic gradients. The domain constraints are assumed simple and handled via projection at every iteration. In this work, we propose a novel conservative stochastic optimization algorithm (CSOA) that achieves zero constraint violation and Ø(T^-1/2) optimality gap. Further, the projection operation (for scenarios when calculating projection is expensive) in the proposed algorithm can be avoided by considering the conditional gradient or Frank-Wolfe (FW) variant of the algorithm. The state-of-the-art stochastic FW variants achieve an optimality gap of Ø(T^-1/3) after T iterations, though these algorithms have not been applied to problems with functional expectation constraints. In this work, we propose the FW-CSOA algorithm that is not only projection-free but also achieves zero constraint violation with Ø(T^-1/4) decay of the optimality gap. The efficacy of the proposed algorithms is tested on two relevant problems: fair classification and structured matrix completion.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
04/13/2016

Algorithms for stochastic optimization with expectation constraints

This paper considers the problem of minimizing an expectation function o...
research
07/14/2021

Zeroth and First Order Stochastic Frank-Wolfe Algorithms for Constrained Optimization

This paper considers stochastic convex optimization problems with two se...
research
08/07/2019

A Data Efficient and Feasible Level Set Method for Stochastic Convex Optimization with Expectation Constraints

Stochastic convex optimization problems with expectation constraints (SO...
research
01/19/2016

Variable projection without smoothness

The variable projection technique solves structured optimization problem...
research
06/08/2019

Optimal Convergence for Stochastic Optimization with Multiple Expectation Constraints

In this paper, we focus on the problem of stochastic optimization where ...
research
12/17/2020

Stochastic Compositional Gradient Descent under Compositional constraints

This work studies constrained stochastic optimization problems where the...
research
07/20/2019

Optimal Design of Queuing Systems via Compositional Stochastic Programming

Well-designed queuing systems form the backbone of modern communications...

Please sign up or login with your details

Forgot password? Click here to reset