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To be fair or efficient or a bit of both

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posted on 2024-07-12, 11:15 authored by Moshe Zukerman, Musa Mammadov, Liansheng Tan, Iradj Ouveysi, Lachlan L. H. Andrew
Introducing a new concept of (α,β)-fairness, which allows for a bounded fairness compromise, so that a source is allocated a rate neither less than 0 ≤α≤ nor more than β≥ times its fair share, this paper provides a framework to optimize efficiency (utilization, throughput or revenue) subject to fairness constraints in a general telecommunications network for an arbitrary fairness criterion and cost functions. We formulate a non-linear program (NLP) that finds the optimal bandwidth allocation by maximizing efficiency subject to (α,β)-fairness constraints. This leads to what we call an efficiency–fairness function, which shows the benefit in efficiency as a function of the extent to which fairness is compromised. To solve the NLP we use two algorithms. The first is a well-known branch-and-bound-based algorithm called Lipschitz Global Optimization and the second is a recently developed algorithm called Algorithm for Global Optimization Problems (AGOP). We demonstrate the applicability of the framework to a range of examples from sharing a single link to efficiency fairness issues associated with serving customers in remote communities.

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PDF (Accepted manuscript)

ISSN

0305-0548

Journal title

Computers and Operations Research

Volume

35

Issue

12

Pagination

19 pp

Publisher

Elsevier

Copyright statement

Copyright © 2007 Elsevier Ltd. The accepted manuscript is reproduced in accordance with the copyright policy of the publisher.

Language

eng

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