Decentralized Projection-free Online Upper-Linearizable Optimization with Applications to DR-Submodular Optimization
Abstract
We introduce a novel framework for decentralized projection-free optimization, extending projection-free methods to a broader class of upper-linearizable functions. Our approach leverages decentralized optimization techniques with the flexibility of upper-linearizable function frameworks, effectively generalizing traditional DR-submodular function optimization. We obtain the regret of with communication complexity of and number of linear optimization oracle calls of for decentralized upper-linearizable function optimization, for any . This approach allows for the first results for monotone up-concave optimization with general convex constraints and non-monotone up-concave optimization with general convex constraints. Further, the above results for first order feedback are extended to zeroth order, semi-bandit, and bandit feedback.
Cite
@article{arxiv.2501.18183,
title = {Decentralized Projection-free Online Upper-Linearizable Optimization with Applications to DR-Submodular Optimization},
author = {Yiyang Lu and Mohammad Pedramfar and Vaneet Aggarwal},
journal= {arXiv preprint arXiv:2501.18183},
year = {2026}
}