In 1954, Alston S. Householder published \textit{Principles of Numerical Analysis}, one of the first modern treatments on matrix decomposition that favored a (block) LU decomposition-the factorization of a matrix into the product of lower and upper triangular matrices. And now, matrix decomposition has become a core technology in machine learning, largely due to the development of the back propagation algorithm in fitting a neural network. The sole aim of this survey is to give a self-contained introduction to concepts and mathematical tools in numerical linear algebra and matrix analysis in order to seamlessly introduce matrix decomposition techniques and their applications in subsequent sections. However, we clearly realize our inability to cover all the useful and interesting results concerning matrix decomposition and given the paucity of scope to present this discussion, e.g., the separated analysis of the Euclidean space, Hermitian space, Hilbert space, and things in the complex domain. We refer the reader to literature in the field of linear algebra for a more detailed introduction to the related fields. Keywords: Existence and computing of matrix decompositions, Floating point operations (flops), Low-rank approximation, Pivot, LU/PLU decomposition, CR/CUR/Skeleton decomposition, Coordinate transformation, ULV/URV decomposition, Rank decomposition, Rank revealing decomposition, Update/downdate, Tensor decomposition.
翻译:1954年,Alston S. Achomerer出版了“数字线性代数和矩阵分析原则”的首个现代处理方法之一,在矩阵分解法上首次采用了有利于(块) LU分解的矩阵分解法,将矩阵分解成下层和上层三角矩阵的产物。现在,矩阵分解已成为机器学习的核心技术,这主要是因为在安装神经网络时开发了背传播算法。这次调查的唯一目的是在数值线性代数和矩阵分析中自成一体地引入概念和数学工具,以便无缝地引入矩阵分解技术及其在随后各节中的应用。然而,我们显然认识到我们无法涵盖关于矩阵分解的所有有用和有趣的结果,而且鉴于目前讨论的范围不足,例如,对Euclidecidean空间、Hermitian空间、Hilbert空间和复杂领域事物的分离分析。我们让读者参考线性代位代数领域的文献,以便更详细地介绍相关领域。 关键词:UBIRC的深度、IM-Dirmal decomma decomma decomma decomma decommation、Misal decomma decomma decomma decommal Sliction Sliction Smal Smal Section/decommation/decommal Smal decommal.