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Multivariate Statistical Analysis A High-Dimensional Approach [Paperback]

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  • Category: Books (Mathematics)
  • Author:  Serdobolskii, V.I.
  • Author:  Serdobolskii, V.I.
  • ISBN-10:  9048155932
  • ISBN-10:  9048155932
  • ISBN-13:  9789048155934
  • ISBN-13:  9789048155934
  • Publisher:  Springer
  • Publisher:  Springer
  • Binding:  Paperback
  • Binding:  Paperback
  • Pub Date:  01-Feb-2010
  • Pub Date:  01-Feb-2010
  • SKU:  9048155932-11-SPRI
  • SKU:  9048155932-11-SPRI
  • Item ID: 100979826
  • List Price: $109.99
  • Seller: ShopSpell
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  • Delivery by: Jul 03 to Jul 05
  • Notes: Brand New Book. Order Now.

Multivariate Statistical Analysis

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.Preface. Introduction. 1. Spectral Properties of Large Wishart Matrices. 2. Resolvents and Spectral Functions of Large Sample Covariance Matrices. 3. Resolvents and Spectral Functions of Large Pooled Sample Covariance Matrices. 4. Normal Evaluation of Quality Functions. 5. Estimation of High-Dimensional Inverse Covariance Matrices. 6. Epsilon-Dominating Component-Wise Shrinkage Estimators of Normal Mean. 7. Improved Estimators of High-Dimensional Expectation Vectors. 8. Quadratic Risk of Linear Regression with a Large Number of Random Predictors. 9. Linear Discriminlc%
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