Primal Beats Dual on Online Packing LPs in the Random-Order Model
Thomas Kesselheim, Klaus Radke, Andreas T\"onnis, Berthold V\"ocking

TL;DR
This paper presents a simple, primal-based online algorithm for packing LPs in the random-order model that achieves near-optimal competitive ratios, improving previous results significantly and extending to mechanisms and generalized assignment problems.
Contribution
It introduces a primal-only online algorithm for packing LPs that surpasses prior dual-based methods in competitive ratio and applies to mechanisms and generalized assignment problems.
Findings
Achieves a $1 - O( oot{rac{\
exponential improvement over previous work in capacity ratio dependence
Abstract
We study packing LPs in an online model where the columns are presented to the algorithm in random order. This natural problem was investigated in various recent studies motivated, e.g., by online ad allocations and yield management where rows correspond to resources and columns to requests specifying demands for resources. Our main contribution is a -competitive online algorithm, where denotes the column sparsity, i.e., the maximum number of resources that occur in a single column, and denotes the capacity ratio , i.e., the ratio between the capacity of a resource and the maximum demand for this resource. In other words, we achieve a -approximation if the capacity ratio satisfies , which is known to be best-possible for any (randomized) online algorithms. Our result improves exponentially on previous…
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Taxonomy
TopicsOptimization and Search Problems · Auction Theory and Applications · Scheduling and Optimization Algorithms
