Multi-Group Multicast Beamforming: Optimal Structure and Efficient Algorithms
Min Dong, Qiqi Wang

TL;DR
This paper derives the optimal structure for multi-group multicast beamforming, revealing low-dimensional features and proposing efficient algorithms with near-optimal performance for large antenna systems.
Contribution
It establishes the optimal beamforming structure for multi-group multicast, generalizes uplink-downlink duality, and introduces low-complexity algorithms for large-scale systems.
Findings
Optimal multicast beamforming structure derived
Low-dimensional solution independent of antenna count
Near-optimal approximate solutions for large systems
Abstract
This paper considers the multi-group multicast beamforming optimization problem, for which the optimal solution has been unknown due to the non-convex and NP-hard nature of the problem. By utilizing the successive convex approximation numerical method and Lagrangian duality, we obtain the optimal multicast beamforming solution structure for both the quality-of-service (QoS) problem and the max-min fair (MMF) problem. The optimal structure brings valuable insights into multicast beamforming: We show that the notion of uplink-downlink duality can be generalized to the multicast beamforming problem. The optimal multicast beamformer is a weighted MMSE filter based on a group-channel direction: a generalized version of the optimal downlink multi-user unicast beamformer. We also show that there is an inherent low-dimensional structure in the optimal multicast beamforming solution independent…
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