This paper studies the deflation algorithm when applied to estimate a low-rank symmetric spike contained in a large tensor corrupted by additive Gaussian noise. Specifically, we provide a precise characterization of the large-dimensional performance of deflation in terms of the alignments of the vectors obtained by successive rank-1 approximation and of their estimated weights, assuming non-trivial (fixed) correlations among spike components. Our analysis allows an understanding of the deflation mechanism in the presence of noise and can be exploited for designing more efficient signal estimation methods.
翻译:本文研究在加性高斯噪声干扰下估计存在于大张量中的低秩对称尖峰时所应用的热极化缩减算法。特别是,我们提供了一个精确的描述矩阵逐秩-1近似得到的向量和它们的估计权重的排列,并且假设尖峰的成分之间存在不平凡的(固定)相关性。我们的分析使得在噪声存在的情况下理解热极化缩减机制成为可能,同时也可以用于设计更加高效的信号估计方法。