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Online Resource Allocation with Buyback: Optimal Algorithms via Primal-Dual

SSRN Electronic Journal(2022)

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摘要
Motivated by applications in cloud computing spot markets and selling banner ads on popular websites, we study the online resource allocation problem with overbooking and cancellation costs, also known as the buyback setting. To model this problem, we consider a variation of the classic edge-weighted online matching problem in which the decision maker can reclaim any fraction of an offline resource that is pre-allocated to an earlier online vertex; however, by doing so not only the decision maker loses the previously allocated edge-weight, it also has to pay a non-negative constant factor f of this edge-weight as an extra penalty. Parameterizing the problem by the buyback factor f, our main result is obtaining optimal competitive algorithms for all possible values of f through a novel primal-dual family of algorithms. We establish the optimality of our results by obtaining separate lower bounds for each of small and large buyback factor regimes and showing how our primal-dual algorithm exactly matches this lower bound by appropriately tuning a parameter as a function of f. Interestingly, our result shows a phase transition: for small buyback regime (f更多
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关键词
resource allocation,optimal algorithms,buyback,primal-dual
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