Achieving a vanishing SNR-gap to exact lattice decoding at a subexponential complexity
Arun Singh, Petros Elia, Joakim Jalden

TL;DR
This paper presents a lattice decoding method that achieves near-optimal error performance with subexponential complexity in high-SNR MIMO systems, significantly improving practical decoding efficiency.
Contribution
It introduces a lattice reduction-aided regularized sphere decoding approach that attains vanishing SNR-gap with subexponential complexity, contrasting with the exponential complexity of standard solutions.
Findings
Achieves vanishing SNR-gap to exact lattice decoding in high-SNR regimes.
Demonstrates subexponential complexity for most MIMO scenarios.
Quantifies the exponential complexity of traditional lattice decoding solutions.
Abstract
The work identifies the first lattice decoding solution that achieves, in the general outage-limited MIMO setting and in the high-rate and high-SNR limit, both a vanishing gap to the error-performance of the (DMT optimal) exact solution of preprocessed lattice decoding, as well as a computational complexity that is subexponential in the number of codeword bits. The proposed solution employs lattice reduction (LR)-aided regularized (lattice) sphere decoding and proper timeout policies. These performance and complexity guarantees hold for most MIMO scenarios, all reasonable fading statistics, all channel dimensions and all full-rate lattice codes. In sharp contrast to the above manageable complexity, the complexity of other standard preprocessed lattice decoding solutions is shown here to be extremely high. Specifically the work is first to quantify the complexity of these lattice…
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