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Phase transitions of spectral initialization for high-dimensional non-convex estimation

机译:光谱初始化的相变,用于高维非凸估计

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We study a spectral initialization method that serves a key role in recent work on estimating signals in non-convex settings. Previous analysis of this method focuses on the phase retrieval problem and provides only performance bounds. In this paper, we consider arbitrary generalized linear sensing models and present a precise asymptotic characterization of the performance of the method in the high-dimensional limit. Our analysis also reveals a phase transition phenomenon that depends on the ratio between the number of samples and the signal dimension. When the ratio is below a minimum threshold, the estimates given by the spectral method are no better than random guesses drawn from a uniform distribution on the hypersphere, thus carrying no information; above a maximum threshold, the estimates become increasingly aligned with the target signal. The computational complexity of the method, as measured by the spectral gap, is also markedly different in the two phases. Worked examples and numerical results are provided to illustrate and verify the analytical predictions. In particular, simulations show that our asymptotic formulas provide accurate predictions for the actual performance of the spectral method even at moderate signal dimensions.
机译:我们研究了一种光谱初始化方法,该方法在最近在估计非凸面设置中的信号方面起关键作用。对该方法的先前分析重点介绍了相位检索问题,仅提供性能范围。在本文中,我们考虑了任意的广义线性传感模型,并在高维极限中提出了该方法性能的精确渐近表征。我们的分析还揭示了一种相变现象,该现象取决于样品数量与信号维度之间的比率。当比率低于最小阈值时,光谱方法给出的估计值不如从高压球上的均匀分布中得出的随机猜测更好,因此没有任何信息。高于最大阈值,估计值越来越与目标信号对齐。通过光谱间隙测量的方法的计算复杂性在两个阶段中也有明显不同。提供了示例和数值结果,以说明和验证分析预测。特别是,模拟表明,即使在中等信号尺寸下,我们的渐近公式也为光谱方法的实际性能提供了准确的预测。

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