Logarithmic Regret in Multisecretary and Online Linear Programs with Continuous Valuations

Published Online:https://doi.org/10.1287/opre.2022.0036

I use empirical processes to study how the shadow prices of a linear program that allocates an endowment of nβRm resources to n customers behave as n. I show the shadow prices (i) adhere to a concentration of measure, (ii) converge to a multivariate normal under central-limit-theorem scaling, and (iii) have a variance that decreases like Θ(1/n). I use these results to prove that the expected regret in an online linear program is Θ(logn), both when the customer variable distribution is known upfront and must be learned on the fly. This result tightens the sharpest known upper bound from O(lognlog logn) to O(logn) , and it extends the Ω(logn) lower bound known for single-dimensional problems to the multidimensional setting. I illustrate my new techniques with a simple analysis of a multisecretary problem.

Supplemental Material: The online appendix is available at https://doi.org/10.1287/opre.2022.0036.

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