Learning-Augmented Algorithms for Online Vertex Cover

Abstract

This paper studies learning-augmented online weighted vertex cover with advice and a parameter λ∈ (0,1). We consider two graph cases: bipartite graphs and general graphs. In both settings, the online algorithm must maintain a feasible vertex cover under irrevocable decisions. We show that these problems admit the same robustness--consistency tradeoffs as learning-augmented ski rental. For the bipartite graph model, we give a randomized algorithm that is 11-e-λ-robust and λ1-e-λ-consistent. For the general graph model, we give a deterministic algorithm that is (1+1λ)-robust and (1+λ)-consistent. We prove that the tradeoffs above are optimal in both settings. We also validate the proposed algorithms through experiments on synthetic and real-world datasets.

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