Poster
MAC Advice for facility location mechanism design
Zohar Barak · Anupam Gupta · Inbal Talgam-Cohen
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Abstract
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Thu 12 Dec 11 a.m. PST
— 2 p.m. PST
Abstract:
Algorithms with predictions are gaining traction across various domains, as a way to surpass traditional worst-case bounds through (machine-learned) advice. We study the canonical problem of $k$-facility location mechanism design,where the $n$ agents are strategic and might misreport their locations. We receive a prediction for each agent's location, and these predictions are crucially allowed to be only "mostly" and "approximately" correct (MAC for short): a $\delta$-fraction of the predicted locations are allowed to be arbitrarily incorrect, and the remainder of the predictions are required to be correct up to an $\varepsilon$-error. Moreover, we make no assumption on the independence of the errors.Can such "flawed" predictions allow us to beat the current best bounds for strategyprooffacility location?We show how natural robustness of the $1$-median (also known as the geometric median) of a set of points leads to an algorithm for single-facility location with MAC predictions. We extend our results to a natural "balanced" variant of the $k$-facility case, and show that without balancedness, robustness completely breaks down even for $k=2$ facilities on a line. As our main result, for this "unbalanced" setting we devise a truthful random mechanism, which outperforms the best known mechanism (with no predictions) by Lu et al.~[2010]. En route, we introduce the problem of "second" facility location, in which the first facility location is already fixed. Our robustness findings may be of independent interest, as quantitative versions of classic breakdown-point results in robust statistics.
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