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Multi-reference factor analysis: low-rank covariance estimation under unknown translations

机译:多参考因子分析:未知翻译下的低级别协方差估计

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摘要

We consider the problem of estimating the covariance matrix of a random signal observed through unknown translations (modeled by cyclic shifts) and corrupted by noise. Solving this problem allows to discover low-rank structures masked by the existence of translations (which act as nuisance parameters), with direct application to principal components analysis.We assume that the underlying signal is of length L and follows a standard factor model with mean zero and r normally distributed factors. To recover the covariance matrix in this case, we propose to employ the second- and fourth-order shift-invariant moments of the signal known as the power spectrum and the trispectrum. We prove that they are sufficient for recovering the covariance matrix (under a certain technical condition) when r <√L. Correspondingly, we provide a polynomial-time procedure for estimating the covariance matrix from many (translated and noisy) observations, where no explicit knowledge of r is required, and prove the procedure's statistical consistency. While our results establish that covariance estimation is possible from the power spectrum and the trispectrum for low-rank covariance matrices, we prove that this is not the case for full-rank covariance matrices. We conduct numerical experiments that corroborate our theoretical findings and demonstrate the favourable performance of our algorithms in various settings, including in high levels of noise.
机译:我们考虑了通过未知翻译(通过循环移动建模)观察到的随机信号的协方差矩阵的问题,并被噪声损坏。解决此问题允许发现被翻译的存在(充当滋扰参数)的低排名结构,并直接应用于主组件分析。我们假设基础信号是长度为l的,并遵循具有平均值的标准因素模型零和R正态分布。为了恢复在这种情况下的协方差矩阵,我们建议采用称为功率谱和三光谱的信号的二阶和四阶移位矩。我们证明,当r <√l时,它们足以恢复协方差矩阵(在一定的技术条件下)。相应地,我们提供了一个多项式时间程序来估算许多(翻译和嘈杂)观察值的协方差矩阵,其中不需要对R的明确了解,并证明了该过程的统计一致性。尽管我们的结果表明,从功率谱和低级别协方差矩阵的三光谱中进行协方差估计,但我们证明,全级协方差矩阵并非如此。我们进行数值实验,以证实我们的理论发现,并在各种环境(包括高噪声)中证明了我们的算法的有利性能。

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