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Vector Approximate Message Passing

机译:矢量近似消息传递

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The standard linear regression (SLR) problem is to recover a vector x(0) from noisy linear observations y = Ax(0) + w. The approximate message passing (AMP) algorithm proposed by Donoho, Maleki, and Montanari is a computationally efficient iterative approach to SLR that has a remarkable property: for large i.i.d. sub-Gaussian matrices A, its per-iteration behavior is rigorously characterized by a scalar state-evolution whose fixed points, when unique, are Bayes optimal. The AMP algorithm, however, is fragile in that even small deviations from the i.i.d. sub-Gaussian model can cause the algorithm to diverge. This paper considers a "vector AMP" (VAMP) algorithm and shows that VAMP has a rigorous scalar state-evolution that holds under a much broader class of large random matrices A: those that are right-orthogonally invariant. After performing an initial singular value decomposition (SVD) of A, the per-iteration complexity of VAMP is similar to that of AMP. In addition, the fixed points of VAMP's state evolution are consistent with the replica prediction of the minimum mean-squared error derived by Tulino, Caire, Verdu, and Shamai. Numerical experiments are used to confirm the effectiveness of VAMP and its consistency with state-evolution predictions.
机译:标准线性回归(SLR)问题是从嘈杂的线性观测值y = Ax(0)+ w中恢复向量x(0)。 Donoho,Maleki和Montanari提出的近似消息传递(AMP)算法是SLR的一种计算有效的迭代方法,具有显着的特性:适用于大型i.d.在亚高斯矩阵A中,其重复迭代行为的特征在于标量状态演化,其唯一时的固定点是贝叶斯最优的。但是,AMP算法非常脆弱,即使与i.d.i的偏差很小。次高斯模型会导致算法发散。本文考虑了“向量AMP”(VAMP)算法,并证明了VAMP具有严格的标量状态演化,在更宽泛的大型随机矩阵A类(直角不变的矩阵)下具有这种状态。在执行A的初始奇异值分解(SVD)之后,VAMP的每次迭代复杂度类似于AMP。另外,VAMP的状态演化的固定点与图利诺,卡伊尔,韦尔杜和沙迈得出的最小均方误差的副本预测一致。数值实验用于确认VAMP的有效性及其与状态演化预测的一致性。

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