Introduction.- Penalized Splines.- Generalized Additive Models.- Semiparametric Regression Analysis of Grouped Data.- Bivariate Function Extensions.- Selection of Additional Topics.-Index.
David Ruppert is Professor of Statistical Science and the Andrew
Schultz Jr. Professor of Engineering at the School of Operations
Research and Information Engineering at Cornell University. He is a
Fellow of the American Statistical Association and the Institute of
Mathematical Statistics and received the Wilcoxon Prize in
1986. Ruppert was named a Highly Cited researcher by ISI, now
known as Clarivate Analytics. His current research focuses on
astrostatistics, measurement error models, splines, semiparametric
regression, and environmental statistics. He has published over 100
articles in refereed journals and has published five books.He is a
past editor of the Journal of the American Statistical Association
and of the Electronic Journal of Statistics
Jaroslaw Harezlak is Associate Professor in the Department of
Epidemiology and Biostatistics at the Indiana University School of
Public Health in Bloomington. He has a Ph.D. in biostatistics from
the Harvard University. After a 2-year post-doctoral training at
the Harvard School of Public Health, he joined Indiana University
as an Assistant Professor. His interests span a number of medical
areas: including NeuroHIV, physical activity, sexually transmitted
infections, and concussions, as well as statistical areas:
including semiparametric regression, functional data analysis and
structured high-dimensional data. In his applied research, he uses
data arising in structural and functional brain imaging,
accelerometry, and intensively collected longitudinal studies. He
has published over 50 peer-reviewed articles in the statistical,
medical and epidemiological journals as well as 3 invited
chapters.
Matt Wand is Distinguished Professor of Statistics at University
of Technology Sydney. He serves as an associate editor for the
Statistics journal: Australian and New Zealand Journal of
Statistics. Professor Wand is chiefly interested in the development
of statistical methodology for finding useful structure in large
multivariate data sets. Currently, Wand’s specific interests
include expectation propagation, message passing algorithms,
variational approximate methods, statistical methods for streaming
data, generalized linear mixed models, and semiparametric
regression.
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