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Spectrum-Adapted Polynomial Approximation for Matrix Functions with Applications in Graph Signal Processing

机译:谱适应的矩阵多项式近似,用于绘图信号处理中的应用

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摘要

We propose and investigate two new methods to approximate f(A)b for large, sparse, Hermitian matrices A. Computations of this form play an important role in numerous signal processing and machine learning tasks. The main idea behind both methods is to first estimate the spectral density of A, and then find polynomials of a fixed order that better approximate the function f on areas of the spectrum with a higher density of eigenvalues. Compared to state-of-the-art methods such as the Lanczos method and truncated Chebyshev expansion, the proposed methods tend to provide more accurate approximations of f(A)b at lower polynomial orders, and for matrices A with a large number of distinct interior eigenvalues and a small spectral width. We also explore the application of these techniques to (i) fast estimation of the norms of localized graph spectral filter dictionary atoms, and (ii) fast filtering of time-vertex signals.
机译:我们提出并调查了两个新方法,以近似F(a)b为大,稀疏的麦克尔迪人矩阵A.这种形式的计算在许多信号处理和机器学习任务中发挥着重要作用。两种方法背后的主要思想是首先估计A的光谱密度,然后找到固定顺序的多项式,以便更好地近似于具有较高密度的特征值的光谱区域的功能f。与诸如Lanczos方法和截断的Chebyshev扩展的最先进的方法相比,所提出的方法倾向于在较低多项式订单下提供更准确的F(a)b的近似,以及具有大量不同的矩阵A内部特征值和小光谱宽度。我们还探讨了这些技术的应用到(i)对局部图谱滤波器字典原子的规范的快速估计,以及(ii)时间 - 顶点信号的快速滤波。

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