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Introduction to 'Fast matrix computations for functional additive models' by S. Barthelme

机译:S. Barthelme介绍“功能加性模型的快速矩阵计算”

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I am very enthusiastic about the very innovative paper "Fast matrix computations for functional additive models" by S. Barthelme, which I find both to be both methodologically and practically very useful. The characterization of the new rQK-class of symmetric positive definite matrices (with inspiration from previous work of Heersink and Furrer (2011)), defines a new class of matrices which can be computed with much less computational costs compared to the general case. Further, the rQK-class is closed under multiplication and inversion. This adds new tools to the computational statistician's toolbox, in addition to the well known computational friendly block-diagoal, Toeplitz, Toeplitz cir-culant and sparse matrices. Barthelme demonstrates, con- vincingly, how to leverage this new rQK-class to obtain great computational savings doing inference in some Latent Gaussian models for functional data analysis.
机译:我对S. Barthelme的极富创新性的论文“功能加性模型的快速矩阵计算”充满热情,该论文在方法论和实践上都非常有用。新的rQK类对称正定矩阵的表征(从Heersink和Furrer(2011)的先前工作中得到启发)定义了一种新的矩阵,与一般情况相比,可以用更少的计算成本进行计算。此外,rQK类在乘法和求逆下是封闭的。除了众所周知的计算友好块对角图,Toeplitz,Toeplitz cir-culant和稀疏矩阵之外,这为计算统计学家的工具箱添加了新工具。 Barthelme令人信服地演示了如何利用这种新的rQK类来获得大量的计算节省,并通过对某些潜在的高斯模型进行功能数据分析来进行推断。

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  • 来源
    《Statistics and computing 》 |2015年第1期| 45-45| 共1页
  • 作者

    Havard Rue;

  • 作者单位

    Department of Mathematical Sciences, NTNU, Trondheim, Norway;

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  • 正文语种 eng
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