We consider the problem of signal estimation in generalized linear models defined via rotationally invariant design matrices. Since these matrices can have an arbitrary spectral distribution, this model is well suited for capturing complex correlation structures which often arise in applications. We propose a novel family of approximate message passing (AMP) algorithms for signal estimation, and rigorously characterize their performance in the high-dimensional limit via a state evolution recursion. Our rotationally invariant AMP has complexity of the same order as the existing AMP derived under the restrictive assumption of a Gaussian design; our algorithm also recovers this existing AMP as a special case. Numerical results showcase a performance close to Vector AMP (which is conjectured to be Bayes-optimal in some settings), but obtained with a much lower complexity, as the proposed algorithm does not require a computationally expensive singular value decomposition.
翻译:我们考虑了通过旋转不定设计矩阵定义的通用线性模型中的信号估计问题。由于这些矩阵可能具有任意的光谱分布,因此该模型非常适合捕捉在应用中经常出现的复杂相关结构。我们建议采用新型的近似电文传递算法(AMP)来进行信号估计,并通过状态演进再现严格描述其在高维极限中的性能。我们的旋转性惯性AMP具有与根据高斯设计限制性假设得出的现有AMP相同的复杂顺序;我们的算法也作为特例回收了这个现有的AMP。数字结果显示一种接近矢量 AMP(在某些环境下被推测为“贝斯-最佳”AMP的性能)的性能,但是其复杂性要低得多,因为拟议的算法不需要计算成本昂贵的单值分解。