返回信息流Matrix Algebra
Theory, Computations, and Applications in Statistics
Series: Springer Texts in Statistics
Gentle, James E.
2007, XXII, 528 p., Hardcover
ISBN: 978-0-387-70872-0
About this textbook
A hugely important work for statisticians, the book’s emphasis is on the areas of matrix analysis that are key sectors for this group of people
Practical use: includes a large number of exercises with some solutions provided in an appendix
Relevant in all the right areas, this book addresses computational issues as well as placing more emphasis on applications than existing texts
Written in an informal style that makes the book’s complex material accessible
Matrix algebra is one of the most important areas of mathematics for data analysis and for statistical theory. The first part of this book presents the relevant aspects of the theory of matrix algebra for applications in statistics. This part begins with the fundamental concepts of vectors and vector spaces, next covers the basic algebraic properties of matrices, then describes the analytic properties of vectors and matrices in the multivariate calculus, and finally discusses operations on matrices in solutions of linear systems and in eigenanalysis. This part is essentially self-contained.
The second part of the book begins with a consideration of various types of matrices encountered in statistics, such as projection matrices and positive definite matrices, and describes the special properties of those matrices. The second part also describes some of the many applications of matrix theory in statistics, including linear models, multivariate analysis, and stochastic processes. The brief coverage in this part illustrates the matrix theory developed in the first part of the book. The first two parts of the book can be used as the text for a course in matrix algebra for statistics students, or as a supplementary text for various courses in linear models or multivariate statistics.
The third part of this book covers numerical linear algebra. It begins with a discussion of the basics of numerical computations, and then describes accurate and efficient algorithms for factoring matrices, solving linear systems of equations, and extracting eigenvalues and eigenvectors. Although the book is not tied to any particular software system, it describes and gives examples of the use of modern computer software for numerical linear algebra. This part is essentially self-contained, although it assumes some ability to program in Fortran or C and/or the ability to use R/S-Plus or Matlab. This part of the book can be used as the text for a course in statistical computing, or as a supplementary text for various courses that emphasize computations.
The book includes a large number of exercises with some solutions provided in an appendix.
James E. Gentle is University Professor of Computational Statistics at George Mason University. He is a Fellow of the American Statistical Association (ASA) and of the American Association for the Advancement of Science. He has held several national offices in the ASA and has served as associate editor of journals of the ASA as well as for other journals in statistics and computing. He is author of Random Number Generation and Monte Carlo Methods, Second Edition, and Elements of Computational Statistics.
附件(3.8MB) ory,_Computations,_and_Applications_in_Statistics_(2007).pdf
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Matrix Algebra Theory Computations and Applications in Stat
cryppie
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书太厚了,能推荐哪几章基础点的么 我正想看这方面
ps:曾同学??
【 在 cryppie 的大作中提到: 】
: Matrix Algebra
: Theory, Computations, and Applications in Statistics
: Series: Springer Texts in Statistics
: ...................
程云鹏的矩阵论吧
对ML现在这两个蛮时髦的:
矩阵的谱--->spectral clustering
广义特征值--->瑞利熵,归一化割(norm cut),LDA,ICA。。。
另外,MIT得open course关于linear algebra也挺好的
ps:你的ip很怪,你是?
【 在 hunterlee 的大作中提到: 】
: 书太厚了,能推荐哪几章基础点的么 我正想看这方面
: ps:曾同学??
谢了
ps: 自个猜去
【 在 cryppie 的大作中提到: 】
: 程云鹏的矩阵论吧
: 对ML现在这两个蛮时髦的:
: 矩阵的谱--->spectral clustering
: ...................
看数学总是最头痛的事。
大部分数学应用方面的文章或者是书仍然是侧重于严密的理论体系和证明,费了很大的劲看下来就是了解了几个重要的数学概念和公式,但是这些东西在实际中所对应的意义还是不清楚。
有没有深入浅出一些的读物,弱化它的数学含义而侧重于应用中的理解。
【 在 cryppie 的大作中提到: 】
: 程云鹏的矩阵论吧
: 对ML现在这两个蛮时髦的:
: 矩阵的谱--->spectral clustering
: ...................