Integral Online Algorithms for Set Cover and Load Balancing with Convex Objectives
Thomas Kesselheim, Marco Molinaro, Kalen Patton, Sahil Singla

TL;DR
This paper develops integral online algorithms for Set Cover and Load Balancing with convex objectives, extending prior fractional results to integral settings and applying to generalized scheduling problems.
Contribution
It introduces a novel approach that bypasses convex relaxation and primal-dual methods, enabling integral solutions for complex online optimization problems with convex and norm objectives.
Findings
Extended fractional results to integral settings for convex objectives.
Applied methods to generalized scheduling problems.
Extended to settings with disjoint-composition of norms.
Abstract
Online Set Cover and Load Balancing are central problems in online optimization, and there is a long line of work on developing algorithms for these problems with convex objectives. Although we know optimal online algorithms with -norm objectives, recent developments for general norms and convex objectives that rely on the online primal-dual framework apply only to fractional settings due to large integrality gaps. Our work focuses on directly designing integral online algorithms for Set Cover and Load Balancing with convex objectives, bypassing the convex-relaxation and the primal-dual technique. Some of the main implications are: 1. For Online Set Cover, we can extend the results of Azar et. al. (2016) for convex objectives and of Kesselheim, Molinaro, and Singla (2024) for symmetric norms from fractional to integral settings. 2. Our results for convex objectives and…
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