Improved Bounds for Online Facility Location with Predictions
We consider Online Facility Location in the framework of learning-augmented online algorithms. In Online Facility Location (OFL), demands arrive one-by-one in a metric space and must be (irrevocably) assigned to an open facility upon arrival, without any knowledge about future demands. We focus on u...
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Zusammenfassung: | We consider Online Facility Location in the framework of learning-augmented
online algorithms. In Online Facility Location (OFL), demands arrive one-by-one
in a metric space and must be (irrevocably) assigned to an open facility upon
arrival, without any knowledge about future demands. We focus on uniform
facility opening costs and present an online algorithm for OFL that exploits
potentially imperfect predictions on the locations of the optimal facilities.
We prove that the competitive ratio decreases from sublogarithmic in the number
of demands $n$ to constant as the so-called $\eta_1$ error, i.e., the sum of
distances of the predicted locations to the optimal facility locations,
decreases. E.g., our analysis implies that if for some $\varepsilon > 0$,
$\eta_1 = \mathrm{OPT} / n^\varepsilon$, where $\mathrm{OPT}$ is the cost of
the optimal solution, the competitive ratio becomes $O(1/\varepsilon)$. We
complement our analysis with a matching lower bound establishing that the
dependence of the algorithm's competitive ratio on the $\eta_1$ error is
optimal, up to constant factors. Finally, we evaluate our algorithm on real
world data and compare the performance of our learning-augmented approach
against the performance of the best known algorithm for OFL without
predictions. |
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DOI: | 10.48550/arxiv.2107.08277 |