A new graph perspective on max-min fairness in Gaussian parallel channels
Abstract
In this work we are concerned with the problem of achieving max-min fairness in Gaussian parallel channels with respect to a general performance function, including channel capacity or decoding reliability as special cases. As our central results, we characterize the laws which determine the value of the achievable max-min fair performance as a function of channel sharing policy and power allocation (to channels and users). In particular, we show that the max-min fair performance behaves as a specialized version of the Lovasz function, or Delsarte bound, of a certain graph induced by channel sharing combinatorics. We also prove that, in addition to such graph, merely a certain 2-norm distance dependent on the allowable power allocations and used performance functions, is sufficient for the characterization of max-min fair performance up to some candidate interval. Our results show also a specific role played by odd cycles in the graph induced by the channel sharing policy and we present an interesting relation between max-min fairness in parallel channels and optimal throughput in an associated interference channel.
Cite
@article{arxiv.0808.0987,
title = {A new graph perspective on max-min fairness in Gaussian parallel channels},
author = {Marcin Wiczanowski and Holger Boche},
journal= {arXiv preprint arXiv:0808.0987},
year = {2016}
}
Comments
41 pages, 8 figures. submitted to IEEE Transactions on Information Theory on August the 6th, 2008