1st Edition

Regressions in Covariances, Dependencies and Graphs

404 Pages 31 Color & 33 B/W Illustrations
by Chapman & Hall

Multivariate data routinely collected nowadays using modern technological devices display cross-sectional, temporal, and spatial dependence.  Regressions in Covariances, Dependencies and Graphs  emphasizes the phenomenal roles of regression in modeling various dependencies using the twin principles of  parsimony  and  regularization  as a guide. For parsimony, c ovariance regression , mimicking... Read more

Preface List of Figures List of Tables 1 Introduction 2 Regularized Regression & Thresholding 3 Covariances and Dependencies 4 Hidden Regressions 5 Multivariate Regressions and Graphs 6 Covariance Regressions 7 PCA and Factor Models 8 Shrinkage and Thresholding 9 Undirected Graphical Models 10 Directed Graphs 11 The World of Time Series Data 12 Spatial Data and Vecchia Approximations A Basics of the R Programming Language Bibliography Author Index Index

Biography

Mohsen Pourahmadi is Emeritus Professor of Statistics at Texas A&M University. His research interests are in time series, multivariate and longitudinal data analysis, dealing with dependence all the time.

Aramayis Dallakyan is a statistician and software developer. His research interests lie at the intersection of graphical models, high-dimensional time series, and statistical/machine learning. He earned his Ph.D. in Statistics from Texas A&M University.