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BER analysis of regularized least squares for BPSK recovery

机译:BPSK恢复的正则化最小二乘法的BER分析

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This paper investigates the problem of recovering an n-dimensional BPSK signal x ∈ {-1, 1} from m-dimensional measurement vector y = Ax+z, where A and z are assumed to be Gaussian with iid entries. We consider two variants of decoders based on the regularized least squares followed by hard-thresholding: the case where the convex relaxation is from {-1, 1} to ℝ and the box constrained case where the relaxation is to [-1, 1]. For both cases, we derive an exact expression of the bit error probability when n and m grow simultaneously large at a fixed ratio. For the box constrained case, we show that there exists a critical value of the SNR, above which the optimal regularizer is zero. On the other side, the regularization can further improve the performance of the box relaxation at low to moderate SNR regimes. We also prove that the optimal regularizer in the bit error rate sense for the unboxed case is nothing but the MMSE detector.
机译:本文研究了从m维测量向量y = Ax + z恢复n维BPSK信号x∈{-1,1}的问题,其中A和z假定为高斯项,且具有iid项。我们考虑基于正则化最小二乘后进行硬阈值处理的解码器的两个变体:凸松弛为{-1,1}到ℝ的情况,框约束松弛为[-1,1]的情况。对于这两种情况,当n和m同时以固定的比率同时变大时,我们得出误码概率的精确表达式。对于盒约束情况,我们表明存在SNR的临界值,在该临界值之上,最佳正则化因子为零。另一方面,正则化可以进一步改善在中低SNR体制下的盒松弛性能。我们还证明,对于未装箱的情况,在误码率意义上的最佳正则化器不过是MMSE检测器而已。

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