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Competitive Online Optimization under Inventory Constraints
This paper studies online optimization under inventory (budget) constraints. While online optimization is a well-studied topic, versions with inventory constraints have proven difficult. We consider a formulation of inventory-constrained optimization that is a generalization of the classic one-way t...
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Published in: | Performance evaluation review 2019-12, Vol.47 (1), p.35-36 |
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container_title | Performance evaluation review |
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creator | Lin, Qiulin Yi, Hanling Pang, John Chen, Minghua Wierman, Adam Honig, Michael Xiao, Yuanzhang |
description | This paper studies online optimization under inventory (budget) constraints. While online optimization is a well-studied topic, versions with inventory constraints have proven difficult. We consider a formulation of inventory-constrained optimization that is a generalization of the classic one-way trading problem and has a wide range of applications. We present a new algorithmic framework, CR-Pursuit, and prove that it achieves the optimal competitive ratio among all deterministic algorithms (up to a problem-dependent constant factor) for inventory-constrained online optimization. Our algorithm and its analysis not only simplify and unify the state-ofthe- art results for the standard one-way trading problem, but they also establish novel bounds for generalizations including concave revenue functions. For example, for one-way trading with price elasticity, CR-Pursuit achieves a competitive ratio within a small additive constant (i.e., 1/3) to the lower bound of ln θ + 1, where θ is the ratio between the maximum and minimum base prices. |
doi_str_mv | 10.1145/3376930.3376953 |
format | article |
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subjects | Applied computing Applied computing / Law, social and behavioral sciences Applied computing / Law, social and behavioral sciences / Economics Mathematics of computing Mathematics of computing / Mathematical analysis Mathematics of computing / Mathematical analysis / Mathematical optimization Theory of computation Theory of computation / Design and analysis of algorithms Theory of computation / Design and analysis of algorithms / Online algorithms Theory of computation / Design and analysis of algorithms / Online algorithms / Online learning algorithms Theory of computation / Models of computation Theory of computation / Models of computation / Interactive computation Theory of computation / Theory and algorithms for application domains Theory of computation / Theory and algorithms for application domains / Machine learning theory Theory of computation / Theory and algorithms for application domains / Machine learning theory / Online learning theory |
title | Competitive Online Optimization under Inventory Constraints |
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