Large-Scale Convex Optimization for Dense Wireless Cooperative Networks
Yuanming Shi, Jun Zhang, Brendan O'Donoghue, Khaled B., Letaief

TL;DR
This paper introduces a two-stage convex optimization framework for dense wireless cooperative networks, enabling efficient, scalable resource allocation and feasibility detection in high-dimensional settings.
Contribution
It presents a novel approach transforming large-scale problems into cone programming form and solving them with ADMM for parallel, scalable optimization.
Findings
Demonstrates significant speedup over existing solvers.
Shows high scalability and reliability in simulations.
Enables infeasibility detection and modeling flexibility.
Abstract
Convex optimization is a powerful tool for resource allocation and signal processing in wireless networks. As the network density is expected to drastically increase in order to accommodate the exponentially growing mobile data traffic, performance optimization problems are entering a new era characterized by a high dimension and/or a large number of constraints, which poses significant design and computational challenges. In this paper, we present a novel two-stage approach to solve large-scale convex optimization problems for dense wireless cooperative networks, which can effectively detect infeasibility and enjoy modeling flexibility. In the proposed approach, the original large-scale convex problem is transformed into a standard cone programming form in the first stage via matrix stuffing, which only needs to copy the problem parameters such as channel state information (CSI) and…
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