Polylogarithmic Bounds on the Competitiveness of Min-cost (Bipartite) Perfect Matching with Delays
Yossi Azar, Ashish Chiplunkar, Haim Kaplan

TL;DR
This paper introduces an improved online algorithm for Min-cost Perfect Matching with Delays that achieves an $O( ext{log } n)$ competitive ratio, removing previous dependence on the metric's aspect ratio, and establishes new lower bounds for randomized algorithms.
Contribution
It presents a new $O( ext{log } n)$ competitive algorithm for MPMD that removes aspect ratio dependence and extends results to bipartite matchings with bounds.
Findings
Achieves $O( ext{log } n)$ competitive ratio for MPMD
Provides a lower bound of $ ilde{ ext{Omega}}( ext{log } n)$ for randomized algorithms
Establishes bounds for bipartite matching with delays
Abstract
We consider the problem of online Min-cost Perfect Matching with Delays (MPMD) recently introduced by Emek et al, (STOC 2016). This problem is defined on an underlying -point metric space. An adversary presents real-time requests online at points of the metric space, and the algorithm is required to match them, possibly after keeping them waiting for some time. The cost incurred is the sum of the distances between matched pairs of points (the connection cost), and the sum of the waiting times of the requests (the delay cost). We present an algorithm with a competitive ratio of , which improves the upper bound of of Emek et al, by removing the dependence on , the aspect ratio of the metric space (which can be unbounded as a function of ). The core of our algorithm is a deterministic algorithm for MPMD on metrics induced by edge-weighted…
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