Self-Optimized OFDMA via Multiple Stackelberg Leader Equilibrium
Jie Ren, Kai-Kit Wong, Jianjun Hou

TL;DR
This paper introduces a novel self-optimization approach for OFDMA interference channels using Stackelberg equilibrium concepts, enabling distributed, near-optimal spectrum management with limited information.
Contribution
It proposes a new framework leveraging environmental interference derivatives and all-Stackelberg-leader equilibrium for distributed OFDMA optimization.
Findings
Distributed ASE game achieves near-optimal performance
Environmental interference derivatives guide equilibrium selection
Unique and optimal solutions under certain conditions
Abstract
The challenge of self-optimization for orthogonal frequency-division multiple-access (OFDMA) interference channels is that users inherently compete harmfully and simultaneous water-filling (WF) would lead to a Pareto-inefficient equilibrium. To overcome this, we first introduce the role of environmental interference derivative in the WF optimization of the interactive OFDMA game and then study the environmental interference derivative properties of Stackelberg equilibrium (SE). Such properties provide important insights to devise free OFDMA games for achieving various SEs, realizable by simultaneous WF regulated by specifically chosen operational interference derivatives. We also present a definition of all-Stackelberg-leader equilibrium (ASE) where users are all foresighted to each other, albeit each with only local channel state information (CSI), and can thus most effectively…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Power Line Communications and Noise · Advanced Wireless Communication Techniques
