Multivariate Statistical Analysis A High-Dimensional Approach

“Multivariate Statistical Analysis: A High-Dimensional Approach” by V.I. Serdobolskii, published by Springer Science & Business Media on October 31, 2000, spans 244 pages and is presented in English. This book addresses the growing interest in multivariate analysis driven by the accumulation of large datasets across various applications. It explores the challenges faced in statistical analysis, particularly when dealing with insufficient sample data, and highlights the limitations of conventional linear multivariate procedures.
Readers will find a thorough examination of the complexities associated with high-dimensional data and the inadequacies of standard statistical methods. The text discusses the difficulties in estimating mean vectors and the instability of results derived from sample covariance matrices. It also emphasizes the issues related to multi-collinear data and the implications of data degeneration as dimensionality increases. This edition serves as a resource for those engaged in mathematics, probability and statistics, and related fields such as technology, engineering, and econometrics.
Official synopsis Publisher
In the last few decades the accumulation of large amounts of in formation in numerous applications. has stimtllated an increased in terest in multivariate analysis. Computer technologies allow one to use multi-dimensional and multi-parametric models successfully. At the same time, an interest arose in statistical analysis with a de ficiency of sample data. Nevertheless, it is difficult to describe the recent state of affairs in applied multivariate methods as satisfactory. Unimprovable (dominating) statistical procedures are still unknown except for a few specific cases. The simplest problem of estimat ing the mean vector with minimum quadratic risk is unsolved, even for normal distributions. Commonly used standard linear multivari ate procedures based on the inversion of sample covariance matrices can lead to unstable results or provide no solution in dependence of data. Programs included in standard statistical packages cannot process ‘multi-collinear data’ and there are no theoretical recommen dations except to ignore a part of the data. The probability of data degeneration increases with the dimension n, and for n > N, where N is the sample size, the sample covariance matrix has no inverse. Thus nearly all conventional linear methods of multivariate statis tics prove to be unreliable or even not applicable to high-dimensional data.
Publisher
Topics
FAQ
What is “Multivariate Statistical Analysis A High-Dimensional Approach” about?
Who is the author of “Multivariate Statistical Analysis A High-Dimensional Approach”?
When was “Multivariate Statistical Analysis A High-Dimensional Approach” published?
What is the ISBN for “Multivariate Statistical Analysis A High-Dimensional Approach”?
What are the book details (language, pages, edition)?
