Periodic Updates for Constrained OCO with Application to Large-Scale Multi-Antenna Systems
Juncheng Wang, Min Dong, Ben Liang, Gary Boudreau

TL;DR
This paper introduces a new online convex optimization algorithm, PQGA, designed for systems with periodic decision updates, demonstrating its effectiveness in large-scale wireless communication scenarios.
Contribution
The paper proposes the PQGA algorithm for periodic decision updates in OCO, addressing environments where decisions are fixed over multiple slots and only revealed after decisions are made.
Findings
PQGA achieves low dynamic and static regret.
PQGA effectively manages constraint violations.
Simulation shows PQGA outperforms existing methods in large-scale systems.
Abstract
In many dynamic systems, decisions on system operation are updated over time, and the decision maker requires an online learning approach to optimize its strategy in response to the changing environment. When the loss and constraint functions are convex, this belongs to the general family of online convex optimization (OCO). In existing OCO works, the environment is assumed to vary in a time-slotted fashion, while the decisions are updated at each time slot. However, many wireless communication systems permit only periodic decision updates, i.e., each decision is fixed over multiple time slots, while the environment changes between the decision epochs. The standard OCO model is inadequate for these systems. Therefore, in this work, we consider periodic decision updates for OCO. We aim to minimize the accumulation of time-varying convex loss functions, subject to both short-term and…
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