Feedback-Topology Designs for Interference Alignment in MIMO Interference Channels
Sungyoon Cho, Kaibin Huang, Dongku Kim, Vincent K. N. Lau, Hyukjin, Chae, Hanbyul Seo, Byounghoon Kim

TL;DR
This paper introduces efficient feedback topologies for interference alignment in MIMO interference channels, significantly reducing feedback overhead and delay while maintaining high throughput.
Contribution
It proposes novel feedback topologies supporting sequential and two-hop feedback, reducing feedback scaling from cubic to linear with the number of users.
Findings
Feedback topologies reduce overhead from cubic to linear in K.
Sequential and two-hop feedback topologies improve delay and scalability.
Bit allocation algorithms enhance throughput in strong interference environments.
Abstract
Interference alignment (IA) is a joint-transmission technique that achieves the capacity of the interference channel for high signal-to-noise ratios (SNRs). Most prior work on IA is based on the impractical assumption that perfect and global channel-state information(CSI) is available at all transmitters. To implement IA, each receiver has to feed back CSI to all interferers, resulting in overwhelming feedback overhead. In particular, the sum feedback rate of each receiver scales quadratically with the number of users even if the quantized CSI is fed back. To substantially suppress feedback overhead, this paper focuses on designing efficient arrangements of feedback links, called feedback topologies, under the IA constraint. For the multiple-input-multiple-output (MIMO) K-user interference channel, we propose the feedback topology that supports sequential CSI exchange (feedback and…
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