Improved Competitive Ratio for Edge-Weighted Online Stochastic Matching

02/11/2023
by   Yilong Feng, et al.
0

We consider the edge-weighted online stochastic matching problem, in which an edge-weighted bipartite graph G=(I∪J, E) with offline vertices J and online vertex types I is given. The online vertices have types sampled from I with probability proportional to the arrival rates of online vertex types. The online algorithm must make immediate and irrevocable matching decisions with the objective of maximizing the total weight of the matching. For the problem with general arrival rates, Feldman et al. (FOCS 2009) proposed the Suggested Matching algorithm and showed that it achieves a competitive ratio of 1-1/e ≈0.632. The ratio has recently been improved to 0.645 by Yan (2022), who proposed the Multistage Suggested Matching (MSM) algorithm. In this paper, we propose the Evolving Suggested Matching (ESM) algorithm, and show that it achieves a competitive ratio of 0.650.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/24/2021

Online Stochastic Matching, Poisson Arrivals, and the Natural Linear Program

We study the online stochastic matching problem. Consider a bipartite gr...
research
04/14/2022

(Fractional) Online Stochastic Matching via Fine-Grained Offline Statistics

Motivated by display advertising on the internet, the online stochastic ...
research
10/22/2022

Edge-weighted Online Stochastic Matching: Beating 1-1/e

We study the edge-weighted online stochastic matching problem. Since Fel...
research
06/02/2022

Max-Weight Online Stochastic Matching: Improved Approximations Against the Online Benchmark

In this paper, we study max-weight stochastic matchings on online bipart...
research
02/23/2020

Online Stochastic Max-Weight Matching: prophet inequality for vertex and edge arrival models

We provide prophet inequality algorithms for online weighted matching in...
research
03/06/2022

The Power of Multiple Choices in Online Stochastic Matching

We study the power of multiple choices in online stochastic matching. De...
research
04/22/2018

Attenuate Locally, Win Globally: An Attenuation-based Framework for Online Stochastic Matching with Timeouts

Online matching problems have garnered significant attention in recent y...

Please sign up or login with your details

Forgot password? Click here to reset