Improved Approximations for Hard Graph Problems using Predictions

Anders Aamand*, Justin Y. Chen*, Siddharth Gollapudi*, Sandeep Silwal*, Hao Wu*

*Corresponding author af dette arbejde

Publikation: Bidrag til bog/antologi/rapportKonferencebidrag i proceedingsForskningpeer review

Abstract

We design improved approximation algorithms for NP-hard graph problems by incorporating predictions (e.g., learned from past data). Our prediction model builds upon and extends the ε-prediction framework by Cohen-Addad, d’Orsi, Gupta, Lee, and Panigrahi (NeurIPS 2024). We consider an edge-based version of this model, where each edge provides two bits of information, corresponding to predictions about whether each of its endpoints belong to an optimal solution. Even with weak predictions where each bit is only ε-correlated with the true solution, this information allows us to break approximation barriers in the standard setting. We develop algorithms with improved approximation ratios for MaxCut, Vertex Cover, Set Cover, and Maximum Independent Set problems (among others). Across these problems, our algorithms share a unifying theme, where we separately satisfy constraints related to high degree vertices (using predictions) and low-degree vertices (without using predictions) and carefully combine the answers.

OriginalsprogEngelsk
TitelProceedings of the 42nd International Conference on Machine Learning
ForlagPMLR
Publikationsdato2025
Sider73-101
StatusUdgivet - 2025
Begivenhed42nd International Conference on Machine Learning, ICML 2025 - Vancouver, Canada
Varighed: 13 jul. 202519 jul. 2025

Konference

Konference42nd International Conference on Machine Learning, ICML 2025
Land/OmrådeCanada
ByVancouver
Periode13/07/202519/07/2025
NavnProceedings of Machine Learning Research
Vol/bind267
ISSN2640-3498

Bibliografisk note

Publisher Copyright:
© 2025 by the author(s).

Citationsformater