Best of Many in Both Worlds: Online Resource Allocation with Predictions under Unknown Arrival Model
Lin An, Andrew A. Li, Benjamin Moseley, and Gabriel Visotsky

TL;DR
This paper develops robust algorithms for online resource allocation that effectively leverage predictions of future requests, even when the accuracy of these predictions is unknown, balancing between following predictions and ignoring them.
Contribution
The paper introduces a novel algorithm that optimally utilizes predictions in online resource allocation without prior knowledge of their accuracy or the arrival model.
Findings
The algorithm matches the theoretical lower bound for leveraging predictions.
Empirical validation on real retail data demonstrates practical effectiveness.
The approach balances prediction use and disregard based on accuracy, improving decision-making.
Abstract
Online decision-makers often obtain predictions on future variables, such as arrivals, demands, inventories, and so on. These predictions can be generated from simple forecasting algorithms for univariate time-series, all the way to state-of-the-art machine learning models that leverage multiple time-series and additional feature information. However, the prediction accuracy is unknown to decision-makers a priori, hence blindly following the predictions can be harmful. In this paper, we address this problem by developing algorithms that utilize predictions in a manner that is robust to the unknown prediction accuracy. We consider the Online Resource Allocation Problem, a generic model for online decision-making, in which a limited amount of resources may be used to satisfy a sequence of arriving requests. Prior work has characterized the best achievable performances when the arrivals…
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Taxonomy
TopicsOptimization and Search Problems · Caching and Content Delivery · IoT and Edge/Fog Computing
