Sufficient Dimension Reduction (Chapman & Hall/CRC Monographs on Statistics and Applied Probability)

Sufficient Dimension Reduction (Chapman & Hall/CRC Monographs on Statistics and Applied Probability) image
ISBN-10:

0367734729

ISBN-13:

9780367734725

Author(s): 李, 冰
Edition: 1
Released: Dec 18, 2020
Publisher: Routledge
Format: Paperback, 284 pages
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Description:

Sufficient dimension reduction is a rapidly developing research field that has wide applications in regression diagnostics, data visualization, machine learning, genomics, image processing, pattern recognition, and medicine, because they are fields that produce large datasets with a large number of variables. Sufficient Dimension Reduction: Methods and Applications with R introduces the basic theories and the main methodologies, provides practical and easy-to-use algorithms and computer codes to implement these methodologies, and surveys the recent advances at the frontiers of this field.\nFeatures\nProvides comprehensive coverage of this emerging research field.\nSynthesizes a wide variety of dimension reduction methods under a few unifying principles such as projection in Hilbert spaces, kernel mapping, and von Mises expansion.\nReflects most recent advances such as nonlinear sufficient dimension reduction, dimension folding for tensorial data, as well as sufficient dimension reduction for functional data.\nIncludes a set of computer codes written in R that are easily implemented by the readers.\nUses real data sets available online to illustrate the usage and power of the described methods.\nSufficient dimension reduction has undergone momentous development in recent years, partly due to the increased demands for techniques to process high-dimensional data, a hallmark of our age of Big Data. This book will serve as the perfect entry into the field for the beginning researchers or a handy reference for the advanced ones.\nThe author\nBing Li obtained his Ph.D. from the University of Chicago. He is currently a Professor of Statistics at the Pennsylvania State University. His research interests cover sufficient dimension reduction, statistical graphical models, functional data analysis, machine learning, estimating equations and quasilikelihood, and robust statistics. He is a fellow of the Institute of Mathematical Statistics and the American Statistical Association. He is an Associate Editor for The Annals of Statistics and the Journal of the American Statistical Association.












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