2022
DOI: 10.1109/tnet.2022.3182890
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Learning-NUM: Network Utility Maximization With Unknown Utility Functions and Queueing Delay

Abstract: Network Utility Maximization (NUM) studies the problems of allocating traffic rates to network users in order to maximize the users' total utility subject to network resource constraints. In this paper, we propose a new NUM framework, Learning-NUM, where the users' utility functions are unknown apriori and the utility function values of the traffic rates can be observed only after the corresponding traffic is delivered to the destination, which means that the utility feedback experiences queueing delay. The go… Show more

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Cited by 8 publications
(10 citation statements)
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References 26 publications
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“…In this section, we consider a real-world network, Abilene network, whose topology is shown in Figure 4. Following the setup in [14], this network contains four data transmission flows with distinct underlying utilities, where flow 1 has a quadratic utility a 1 x 2 , flow 2 has a square root utility…”
Section: Simulation Over Real-world Networkmentioning
confidence: 99%
See 3 more Smart Citations
“…In this section, we consider a real-world network, Abilene network, whose topology is shown in Figure 4. Following the setup in [14], this network contains four data transmission flows with distinct underlying utilities, where flow 1 has a quadratic utility a 1 x 2 , flow 2 has a square root utility…”
Section: Simulation Over Real-world Networkmentioning
confidence: 99%
“…Network utility maximization (NUM) has been studied for decades since the seminal work [1] and has been the central analytical framework for the design of fair and distributed resource allocation over the communication networks (e.g., the Internet, 6G networks). Its applications span from network congestion control [1,2,3], power allocation and routing in wireless networks [4,5], load scheduling in cloud computing [6,7,8], to video streaming over dynamic networks [9,10,11,12,13,14], and etc. A comprehensive introduction of the method and its connections to control theory and convex optimization can be found in [15].…”
Section: Introductionmentioning
confidence: 99%
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“…In [19], the authors present a Deep Q-learning algorithm to dynamically adapt CWmin to random access in wireless networks. The idea is to maximize a network utility function (i.e., a metric measuring the fair use of the medium) [20] under dynamic and uncertain scenarios by rewarding the actions that lead to high utilities (efficient resource usage). The proposed solution employs an intelligent node, called node 0, that implements the DQN algorithm to choose the CWmin for the next time step from historical observations.…”
Section: Related Workmentioning
confidence: 99%