Online Resource Allocation with Samples

74 Pages Posted: 20 Apr 2022 Last revised: 8 Nov 2022

See all articles by Negin Golrezaei

Negin Golrezaei

Massachusetts Institute of Technology (MIT) - Sloan School of Management

Patrick Jaillet

Massachusetts Institute of Technology (MIT) - Electrical Engineering and Computer Science

Zijie Zhou

Massachusetts Institute of Technology - Operations Research Center

Date Written: March 10, 2022

Abstract

We study an online resource allocation problem under uncertainty about demand and about the reward of each type of demand (agents) for the resource. Even though dealing with demand uncertainty in resource allocation problems has been the topic of many papers in the literature, the challenge of not knowing rewards has been barely explored. The lack of knowledge about agents' rewards is inspired by the problem of allocating units of a new resource (e.g., newly developed vaccines or drugs) with unknown effectiveness/value. For such settings, we assume that we can \emph{test} the market before the allocation period starts. During the test period, we sample each agent in the market with probability $p$. We study how to optimally exploit the \emph{sample information} in our online resource allocation problem under adversarial arrival processes. We present an asymptotically optimal algorithm that achieves $1-\Theta(1/(p\sqrt{m}))$ competitive ratio, where $m$ is the number of available units of the resource. By characterizing an upper bound on the competitive ratio of any randomized and deterministic algorithm, we show that our competitive ratio of $1-\Theta(1/(p\sqrt{m}))$ is tight for any $p =\omega(1/\sqrt{m})$. That asymptotic optimality is possible with sample information highlights the significant advantage of running a test period for new resources.
We demonstrate the efficacy of our proposed algorithm using a dataset that contains the number of COVID-19 related hospitalized patients across different age groups.

Keywords: online resource allocation, sample information, new resources, competitive ratio, COVID-19

Suggested Citation

Golrezaei, Negin and Jaillet, Patrick and Zhou, Zijie, Online Resource Allocation with Samples (March 10, 2022). Available at SSRN: https://ssrn.com/abstract=4054796 or http://dx.doi.org/10.2139/ssrn.4054796

Negin Golrezaei

Massachusetts Institute of Technology (MIT) - Sloan School of Management ( email )

100 Main Street
E62-416
Cambridge, MA 02142
United States
02141 (Fax)

Patrick Jaillet

Massachusetts Institute of Technology (MIT) - Electrical Engineering and Computer Science ( email )

77 Massachusetts Avenue
Cambridge, MA 02139-4307
United States

Zijie Zhou (Contact Author)

Massachusetts Institute of Technology - Operations Research Center ( email )

77 Massachusetts Avenue
50 Memorial Drive
Cambridge, MA 02139-4307
United States

HOME PAGE: http://https://zijiezhou.mit.edu

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