A Simple Learning-Augmented Algorithm for Online Packing with Concave Objectives
Elena Grigorescu, Young-San Lin, Maoyuan Song

TL;DR
This paper introduces a simple learning-augmented algorithm for online packing problems with concave objectives, unifying and improving upon existing approaches by using black-box solutions for better performance.
Contribution
The paper presents a novel, straightforward learning-augmented algorithm for online packing with concave objectives, applicable to multiple problems, and discusses conditions for optimal black-box solutions.
Findings
Applicable to online packing linear programming, knapsack, and resource management.
Provides a unified framework simplifying previous complex algorithms.
Raises open questions on optimality conditions for black-box solutions.
Abstract
Learning-augmented algorithms has been extensively studied recently in the computer-science community, due to the potential of using machine learning predictions in order to improve the performance of algorithms. Predictions are especially useful for online algorithms making irrevocable decisions without knowledge of the future. Such learning-augmented algorithms aim to overcome the limitations of classical online algorithms when the predictions are accurate, and still perform comparably when the predictions are inaccurate. A common approach is to adapt existing online algorithms to the particular advice notion employed, which often involves understanding previous sophisticated algorithms and their analyses. However, ideally, one would simply use previous online solutions in a black-box fashion, without much loss in the approximation guarantees. Such clean solutions that avoid opening…
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Taxonomy
TopicsAdvanced Manufacturing and Logistics Optimization · Optimization and Packing Problems · Optimization and Search Problems
