03862nam 22005415 450 991063391690332120250326102802.09781071627938107162793710.1007/978-1-0716-2793-8(MiAaPQ)EBC7150604(Au-PeEL)EBL7150604(CKB)25510411300041(PPN)266349285(DE-He213)978-1-0716-2793-8(EXLCZ)992551041130004120221130d2022 u| 0engurcnu||||||||txtrdacontentcrdamediacrrdacarrierMultivariate Reduced-Rank Regression Theory, Methods and Applications /by Gregory C. Reinsel, Raja P. Velu, Kun Chen2nd ed. 2022.New York, NY :Springer New York :Imprint: Springer,2022.1 online resource (420 pages) illustrationsLecture Notes in Statistics,2197-7186 ;225Print version: Reinsel, Gregory C. Multivariate Reduced-Rank Regression New York, NY : Springer New York,c2023 9781071627914 Includes bibliographical references and index.1. Multivariate Linear Regression -- 2. Reduced-Rank Regression Model -- 3. Reduced-Rank Regression Models with Two Sets of Regressors -- 4. Reduced-Rank Regression Model with Autoregressive Errors -- 5. Multiple Time Series Modeling with Reduced Ranks -- 6. The Growth Curve Model and Reduced-Rank Regression Methods -- 7. Seemingly Unrelated Regression Models with Reduced Ranks -- 8. Applications of Reduced-Rank Regression in Financial Economics -- 9. High-Dimensional Reduced-Rank Regression -- 10. Generalized Reduced-Rank Regression with Complex Data -- 11. Sparse and Low-Rank Regression. 12. Alternate Procedures for Analysis of Multivariate Regression Models.This book provides an account of multivariate reduced-rank regression, a tool of multivariate analysis that enjoys a broad array of applications. In addition to a historical review of the topic, its connection to other widely used statistical methods, such as multivariate analysis of variance (MANOVA), discriminant analysis, principal components, canonical correlation analysis, and errors-in-variables models, is also discussed. This new edition incorporates Big Data methodology and its applications, as well as high-dimensional reduced-rank regression, generalized reduced-rank regression with complex data, and sparse and low-rank regression methods. Each chapter contains developments of basic theoretical results, as well as details on computational procedures, illustrated with numerical examples drawn from disciplines such as biochemistry, genetics, marketing, and finance. This book is designed for advanced students, practitioners, and researchers, who may deal withmoderate and high-dimensional multivariate data. Because regression is one of the most popular statistical methods, the multivariate regression analysis tools described should provide a natural way of looking at large (both cross-sectional and chronological) data sets. This book can be assigned in seminar-type courses taken by advanced graduate students in statistics, machine learning, econometrics, business, and engineering.Lecture Notes in Statistics,2197-7186 ;225StatisticsStatistical Theory and MethodsStatistics.Statistical Theory and Methods.519.535TKKghbsReinsel Gregory C.61456Velu Rajabather PalaniChen KunMiAaPQMiAaPQMiAaPQBOOK9910633916903321Multivariate reduced-rank regression466543UNINA