Distributed Bandit Online Convex Optimization With Time-Varying Coupled Inequality ConstraintsShow others and affiliations
2021 (English)In: IEEE Transactions on Automatic Control, ISSN 0018-9286, E-ISSN 1558-2523, Vol. 66, no 10, p. 4620-4635Article in journal (Refereed) Published
Abstract [en]
Distributed bandit online convex optimization with time-varying coupled inequality constraints is considered, motivated by a repeated game between a group of learners and an adversary. The learners attempt tominimize a sequence of global loss functions and at the same time satisfy a sequence of coupled constraint functions, where the constraints are coupled across the distributed learners at each round. The global loss and the coupled constraint functions are the sum of local convex loss and constraint functions, respectively, which are adaptively generated by the adversary. The local loss and constraint functions are revealed in a bandit manner, i.e., only the values of loss and constraint functions are revealed to the learners at the sampling instance, and the revealed function values are held privately by each learner. Both one- and two-point bandit feedback are studied with the two corresponding distributed bandit online algorithms used by the learners. We show that sublinear expected regret and constraint violation are achieved by these two algorithms, if the accumulated variation of the comparator sequence also grows sublinearly. In particular, we show that O(T-theta) expected static regret and O(T7/4-theta) constraint violation are achieved in the one-point bandit feedback setting, and O((T max{kappa,1-kappa})) expected static regret and O(T1-kappa/2) constraint violation in the two-point bandit feedback setting, where theta is an element of(3/4, 5/6] and kappa is an element of(0, 1) are user-defined tradeoff parameters. Finally, the tightness of the theoretical results is illustrated by numerical simulations of a simple power grid example, which also compares the proposed algorithms to algorithms existing in the literature.
Place, publisher, year, edition, pages
Institute of Electrical and Electronics Engineers (IEEE) , 2021. Vol. 66, no 10, p. 4620-4635
Keywords [en]
Bandit convex optimization, distributed optimization, gradient approximation, online optimization, time-varying constraints
National Category
Control Engineering
Identifiers
URN: urn:nbn:se:kth:diva-303537DOI: 10.1109/TAC.2020.3030883ISI: 000698859900014Scopus ID: 2-s2.0-85104227016OAI: oai:DiVA.org:kth-303537DiVA, id: diva2:1608483
Note
Not duplicate with DiVA 1539507
QC 20211103
2021-11-032021-11-032022-06-25Bibliographically approved