An efficient quasi-maximum-likelihood multiuser detector using semi-definite relaxation

Wing-Kin Ma, T. Davidson, K. Wong, Z. Luo, P. Ching
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引用次数: 5

Abstract

In the standard scenario of multiuser detection, the maximum-likelihood (ML) detector is optimum in the sense of minimum error probability. Unfortunately, ML detection requires the solution of a difficult optimization problem for which it is unlikely that the optimal solution can be efficiently found. We consider an accurate and efficient quasi-ML detector which uses semi-definite relaxation (SDR) to approximate the ML detector. This SDR-ML detector was recently shown to be capable of achieving a bit error rate (BER) close to that of the true ML detector. Here, we show that several existing suboptimal detectors, such as the decorrelator, can be viewed as degenerate versions of the SDR-ML detector. Hence, it is expected that the SDR-ML detector should perform better than those detectors. This expectation is confirmed by simulations, where the BER performance of the SDR-ML detector is significantly better than that of other suboptimal detectors including the decorrelator and the linear-minimum-mean-square-error detector.
利用半定松弛的高效准最大似然多用户检测器
在多用户检测的标准场景中,最大似然(ML)检测器在最小错误概率的意义上是最佳的。不幸的是,机器学习检测需要解决一个困难的优化问题,而这个问题不太可能有效地找到最优解决方案。我们考虑了一种精确和高效的准机器学习检测器,它使用半确定弛豫(SDR)来近似机器学习检测器。这种SDR-ML检测器最近被证明能够实现接近真正ML检测器的误码率(BER)。在这里,我们展示了几个现有的次优检测器,如去相关器,可以看作是SDR-ML检测器的简并版本。因此,预计SDR-ML检测器应该比这些检测器表现更好。仿真证实了这一期望,其中SDR-ML检测器的误码率性能明显优于其他次优检测器,包括去相关器和线性最小均方误差检测器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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