Modern Multivariate Statistical Techniques : Regression, Classification, and Manifold Learning / by Alan J. Izenman
(Springer Texts in Statistics)
データ種別 | 電子ブック |
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出版情報 | New York, NY : Springer New York : Imprint: Springer , 2008 |
本文言語 | 英語 |
大きさ | XXV, 733 p : online resource |
書誌詳細を非表示
内容注記 | and Preview Data and Databases Random Vectors and Matrices Nonparametric Density Estimation Model Assessment and Selection in Multiple Regression Multivariate Regression Linear Dimensionality Reduction Linear Discriminant Analysis Recursive Partitioning and Tree-Based Methods Artificial Neural Networks Support Vector Machines Cluster Analysis Multidimensional Scaling and Distance Geometry Committee Machines Latent Variable Models for Blind Source Separation Nonlinear Dimensionality Reduction and Manifold Learning Correspondence Analysis |
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一般注記 | Remarkable advances in computation and data storage and the ready availability of huge data sets have been the keys to the growth of the new disciplines of data mining and machine learning, while the enormous success of the Human Genome Project has opened up the field of bioinformatics. These exciting developments, which led to the introduction of many innovative statistical tools for high-dimensional data analysis, are described here in detail. The author takes a broad perspective; for the first time in a book on multivariate analysis, nonlinear methods are discussed in detail as well as linear methods. Techniques covered range from traditional multivariate methods, such as multiple regression, principal components, canonical variates, linear discriminant analysis, factor analysis, clustering, multidimensional scaling, and correspondence analysis, to the newer methods of density estimation, projection pursuit, neural networks, multivariate reduced-rank regression, nonlinear manifold learning, bagging, boosting, random forests, independent component analysis, support vector machines, and classification and regression trees. Another unique feature of this book is the discussion of database management systems. This book is appropriate for advanced undergraduate students, graduate students, and researchers in statistics, computer science, artificial intelligence, psychology, cognitive sciences, business, medicine, bioinformatics, and engineering. Familiarity with multivariable calculus, linear algebra, and probability and statistics is required. The book presents a carefully-integrated mixture of theory and applications, and of classical and modern multivariate statistical techniques, including Bayesian methods. There are over 60 interesting data sets used as examples in the book, over 200 exercises, and many color illustrations and photographs. Alan J. Izenman is Professor of Statistics and Director of the Center for Statistical and Information Science at Temple University. He has also been on the faculties of Tel -Aviv University and Colorado State University, and has held visiting appointments at the University of Chicago, the University of Minnesota, Stanford University, and the University of Edinburgh. He served as Program Director of Statistics and Probability at the National Science Foundation and was Program Chair of the 2007 Interface Symposium on Computer Science and Statistics with conference theme of Systems Biology. He is a Fellow of the American Statistical Association. |
著者標目 | *Izenman, Alan J. author SpringerLink (Online service) |
件 名 | LCSH:Mathematics LCSH:Mathematical statistics LCSH:Data mining LCSH:Pattern recognition LCSH:Computer software LCSH:Probabilities LCSH:Statistics FREE:Mathematics FREE:Probability Theory and Stochastic Processes FREE:Mathematical Software FREE:Data Mining and Knowledge Discovery FREE:Statistical Theory and Methods FREE:Probability and Statistics in Computer Science FREE:Pattern Recognition |
分 類 | DC23:519.2 |
巻冊次 | ISBN:9780387781891 |
ISBN | 9780387781891 |
URL | http://dx.doi.org/10.1007/978-0-387-78189-1 |
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