Selected Payback Statistical Contributions to Matrix/Linear Algebra: Some Counterflowing Conceptualizations

IF 0.9 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Stats Pub Date : 2022-11-09 DOI:10.3390/stats5040065
D. Griffith
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引用次数: 0

Abstract

Matrix/linear algebra continues bestowing benefits on theoretical and applied statistics, a practice it began decades ago (re Fisher used the word matrix in a 1941 publication), through a myriad of contributions, from recognition of a suite of matrix properties relevant to statistical concepts, to matrix specifications of linear and nonlinear techniques. Consequently, focused parts of matrix algebra are topics of several statistics books and journal articles. Contributions mostly have been unidirectional, from matrix/linear algebra to statistics. Nevertheless, statistics offers great potential for making this interface a bidirectional exchange point, the theme of this review paper. Not surprisingly, regression, the workhorse of statistics, provides one tool for such historically based recompence. Another prominent one is the mathematical matrix theory eigenfunction abstraction. A third is special matrix operations, such as Kronecker sums and products. A fourth is multivariable calculus linkages, especially arcane matrix/vector operators as well as the Jacobian term associated with variable transformations. A fifth, and the final idea this paper treats, is random matrices/vectors within the context of simulation, particularly for correlated data. These are the five prospectively reviewed discipline of statistics subjects capable of informing, inspiring, or otherwise furnishing insight to the far more general world of linear algebra.
选择回报统计贡献矩阵/线性代数:一些逆流的概念
矩阵/线性代数继续为理论和应用统计学带来好处,这是它几十年前开始的一种实践(在1941年的一份出版物中重新使用了矩阵一词),通过无数的贡献,从认识到与统计概念相关的一套矩阵性质,到线性和非线性技术的矩阵规范。因此,矩阵代数的重点部分是一些统计学书籍和期刊文章的主题。贡献大多是单向的,从矩阵/线性代数到统计学。尽管如此,统计学为使这一接口成为双向交换点提供了巨大的潜力,这也是本文的主题。不出所料,回归作为统计学的主力,为这种基于历史的重新计算提供了一种工具。另一个突出的是数学矩阵理论的特征函数抽象。第三种是特殊的矩阵运算,如Kronecker和和和积。第四种是多变量微积分联系,特别是神秘的矩阵/向量算子以及与变量变换相关的雅可比项。第五个,也是本文处理的最后一个想法,是模拟背景下的随机矩阵/向量,特别是对于相关数据。这是五门前瞻性综述的统计学学科,能够为更普遍的线性代数世界提供信息、启发或以其他方式提供见解。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
0.60
自引率
0.00%
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0
审稿时长
7 weeks
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