Jorge Cortés
Professor
Cymer Corporation Endowed Chair
Cooperative data-driven distributionally robust optimization
A. Cherukuri, J. Cortés
IEEE Transactions on Automatic Control 65 (10) (2020), 4400-4407
Abstract
This paper studies a class of multiagent stochastic
optimization problems where the objective is to
minimize the expected value of a function which
depends on a random variable. The probability
distribution of the random variable is unknown to
the agents, so each one gathers samples of it. The
agents aim to cooperatively find, using their data,
a solution to the optimization problem with
guaranteed out-of-sample performance. The approach
is to formulate a data-driven distributionally
robust optimization problem using Wasserstein
ambiguity sets, which turns out to be equivalent to
a convex program. We reformulate the latter as a
distributed optimization problem and identify a
convex-concave augmented Lagrangian function whose
saddle points are in correspondence with the
optimizers provided a min-max interchangeability
criteria is met. Our distributed algorithm design
then consists of the saddle-point dynamics
associated to the augmented Lagrangian. We formally
establish that the trajectories of the dynamics
converge asymptotically to a saddle point and hence
an optimizer of the problem. Finally, we provide a
class of functions that meet the min-max
interchangeability criteria. Simulations illustrate
our results.
pdf
Mechanical and Aerospace Engineering,
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cortes at ucsd.edu
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