NeurIPS2022

Fast Algorithms for Packing Proportional Fairness and its Dual

Francisco Criado, David Martínez-Rubio, Sebastian Pokutta

被引用 3 次

摘要

The proportional fair resource allocation problem is a major problem studied in flow control of networks, operations research, and economic theory, where it has found numerous applications. This problem, defined as the constrained maximization of ilogxi\sum_i \log x_i, is known as the packing proportional fairness problem when the feasible set is defined by positive linear constraints and xR0nx \in \mathbb{R}^{n}_{\geq 0}. In this work, we present a distributed accelerated first-order method for this problem which improves upon previous approaches. We also design an algorithm for the optimization of its dual problem. Both algorithms are width-independent. Finally, we show the latter problem has applications to the volume reduction of bounding simplices in an old linear programming algorithm of (YL82), and we obtain some improvements as a result.