Abstract

A minimax duality for a Gaussian mutual information expression was introduced by Yu. An interesting observation is the relationship between cost constraints on the transmit covariances and noise covariances in the dual problem via Lagrangian multipliers. We introduce a minimax duality for general MIMO interference networks, where noise and transmit covariances are optimized subject to linear conic constraints. We observe a fully symmetric relationship between the solutions of both networks, where the roles of the optimization variables and Lagrangian multipliers are inverted. The least favorable noise covariance itself provides a Lagrangian multiplier for the linear conic constraint on the transmit covariance in the dual network, while the transmit covariance provides a Lagrangian multiplier for the constraint on the interference plus noise covariance in the dual network. The degrees of freedom available for optimization are constituted by linear subspaces, where the orthogonal subspaces induce the constraints in the dual network. For the proof of our duality we make use of the existing polite water-filling network duality and as a by-product we are able to show that maximization problems in MIMO interference networks have a zero-duality gap for a special formulation of the dual function. Our minimax duality unifies and extends several results, including the original minimax duality and other known network dualities. New results and applications are MIMO transmission strategies that manage and handle uncertainty due to unknown inter-cell interference and information theoretic proofs concerning cooperation in networks and optimality of proper signaling.

Highlights

  • From the literature, we know network dualities of the following three types: signal-to-interference-and-noise-ratio (SINR) dualities [1,2,3,4], mean-square-error (MSE) dualities [5,6,7], and rate dualities [4,8,9,10,11,12]

  • Our multi-user minimax duality enables new results concerning robustness to interference in MIMO networks, where uncertainty in the spatial signature of interfering signals is a major source of performance degradation

  • We presented a minimax duality for MIMO interference networks, where noise and transmit covariances are optimized subject to linear conic constraints

Read more

Summary

Introduction

We know network dualities of the following three types: signal-to-interference-and-noise-ratio (SINR) dualities [1,2,3,4], mean-square-error (MSE) dualities [5,6,7], and rate dualities [4,8,9,10,11,12]. Our result generalizes the original minimax duality by Yu [10] to a larger class of constraints and to interference networks, which contain broadcast and multiple access channels (with and without non-linear interference cancellation) as special cases. The current version of [28] available at arXiv contains several flaws, the most significant one being the following: The authors claim that max-min equals min-max for problem Equations (7)–(9) and the solution is a saddle point This is wrong—here is a counter example: Consider a interference network with square channels that are full rank. The novel minimax duality unifies and extends several existing results, for example the least favorable noise capacity [17,18] and optimization of the transmit covariances under a per antenna power constraint [14,16].

System Model
Linear Conic Constraints
Relationship to Linear Constraints
Examples
Minimax Duality with Linear Conic Constraints
Original Minimax Duality
Structure of the Worst Case Noise Covariance
Worst Case Noise Capacity
Duality of Broadcast and Multiple Access Channel
Interference Robust Multi-User MIMO
Information Theoretic Proofs
Conditions for Existence of a Solution
Properties of the Solutions – Optimality Conditions
Proof of the Minimax Duality
Zero Duality Gap
Uplink-Downlink Transformation Rules
Possible Extensions
Conclusions and Future Work
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call