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FEAT: Fair Coordinated Iterative Water-Filling Algorithm

Abstract : In this paper, we consider a perfect coordinated water-filling game, in which each user transmits solely on a given carrier. The main goal of the proposed algorithm (FEAT) is to achieve close to the optimal, while keeping a decent level of fairness. The key idea within FEAT is to minimize the ratio between the best and the worst utilities of the users. This is done by ensuring that, at each iteration (channel assignment), a user is satisfied with this assignment as long as it does not lose much more than other users in the system. It has been shown that FEAT outperforms most of the related algorithms in many aspects, especially in interference-limited systems. Indeed, with FEAT we can ensure a nearoptimal, fair and energy efficient solution with low computational complexity. In terms of robustness, it turns out that the balance between being nearly globally optimal and good from an individual point of view seems hard to sustain with a significant number of users. Also notice that, in this regard, global optimality gets less affected than the individual one, which offers hope that such an accurate water-filling algorithm can be designed around competition in interference-limited systems.
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https://hal.archives-ouvertes.fr/hal-03773348
Contributor : Majed HADDAD Connect in order to contact the contributor
Submitted on : Friday, September 9, 2022 - 10:28:32 AM
Last modification on : Saturday, September 10, 2022 - 3:50:05 AM

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  • HAL Id : hal-03773348, version 1

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Majed Haddad, Piotr Wiecek, Oussama Habachi, Samir M. Perlaza, Shahid Mehraj Shah. FEAT: Fair Coordinated Iterative Water-Filling Algorithm. The 25th International Conference on Modeling, Analysis and Simulation of Wireless and Mobile Systems (MSWIM'22), Oct 2022, Montreal, Canada. ⟨hal-03773348⟩

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