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Prophets and Secretaries with Overbooking (1805.05094v2)

Published 14 May 2018 in cs.GT and cs.DS

Abstract: The prophet and secretary problems demonstrate online scenarios involving the optimal stopping theory. In a typical prophet or secretary problem, selection decisions are assumed to be immediate and irrevocable. However, many online settings accommodate some degree of revocability. To study such scenarios, we introduce the $\ell-out-of-k$ setting, where the decision maker can select up to $k$ elements immediately and irrevocably, but her performance is measured by the top $\ell$ elements in the selected set. Equivalently, the decision makes can hold up to $\ell$ elements at any given point in time, but can make up to $k-\ell$ returns as new elements arrive. We give upper and lower bounds on the competitive ratio of $\ell$-out-of-$k$ prophet and secretary scenarios. These include a single-sample prophet algorithm that gives a competitive ratio of $1-\ell\cdot e{-\Theta\left(\frac{\left(k-\ell\right)2}{k}\right)}$, which is asymptotically tight for $k-\ell=\Theta(\ell)$. For secretary settings, we devise an algorithm that obtains a competitive ratio of $1-\ell e{-\frac{k-8\ell}{2+2\ln \ell}} - e{-k/6}$, and show that no secretary algorithm obtains a better ratio than $1-e{-k}$ (up to negligible terms). In passing, our results lead to an improvement of the results of Assaf et al. [2000] for $1-out-of-k$ prophet scenarios. Beyond the contribution to online algorithms and optimal stopping theory, our results have implications to mechanism design. In particular, we use our prophet algorithms to derive {\em overbooking} mechanisms with good welfare and revenue guarantees; these are mechanisms that sell more items than the seller's capacity, then allocate to the agents with the highest values among the selected agents.

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