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OverviewFull Product DetailsAuthor: Pierre Lafaye de Micheaux , Rémy Drouilhet , Benoit LiquetPublisher: Springer-Verlag New York Inc. Imprint: Springer-Verlag New York Inc. Edition: Softcover reprint of the original 1st ed. 2013 Volume: 40 Weight: 1.353kg ISBN: 9781493941438ISBN 10: 1493941437 Pages: 628 Publication Date: 01 October 2016 Audience: Professional and scholarly , Professional & Vocational Format: Paperback Publisher's Status: Active Availability: Manufactured on demand ![]() We will order this item for you from a manufactured on demand supplier. Table of ContentsForeward.- Basic Concepts and Data Organisation.- Importing, Exporting and Producing Data.- Data Manipulation, Functions.- R and its Documentation.- Drawing Curves and Plots.- Programming in R.- Managing Sessions.- Basic Mathematics.- Descriptive Statistics.- A Better Understanding of Random Variables.- Confidence Intervals and Hypothesis Testing.- Simple and Multiple Linear Regression.- Elementary Analysis of Variance.- Installing R and R Packages.- References.- Indices.- Solutions.ReviewsFrom the book reviews: This is a great addition to the chorus of books on R. It is a clear an excellent resource for teaching courses on data analysis and statistical computing using R at the graduate and advanced undergraduate levels. The book can be an asset for data scientists, and even more broadly for a wide variety of users including students, teachers, researchers, software engineers, and others whose work involves statistics, mathematics, and computer science. (Yousri El Fattah, Computing Reviews, January, 2015) From the book reviews: This is a great addition to the chorus of books on R. It is a clear an excellent resource for teaching courses on data analysis and statistical computing using R at the graduate and advanced undergraduate levels. The book can be an asset for data scientists, and even more broadly for a wide variety of users including students, teachers, researchers, software engineers, and others whose work involves statistics, mathematics, and computer science. (Yousri El Fattah, Computing Reviews, January, 2015) Author InformationPierre Lafaye de Micheaux is a Canadian-French-Swiss researcher, Adjunct Associate Professor at Université de Montréal (Canada) and Associate Professor at Grenoble University (France). In 2013-14, he is a Senior Visiting Fellow to the Department of Statistics and also to the School of Psychiatry of the University of New South Wales (Sydney, Australia). His main research interests are: Asymptotics, Biostatistics, Bootstrap, Complex random variables, Developing R packages, Hypothesis testing theory, Independent Component Analysis, Multiple testing and Sample size determination, Multivariate statistics, Neuroscience, Reproducible research, Time series analysis. Pierre is an experienced user of Linux and R since 1998 and the co-author of several R packages available on the CRAN. Rémy Drouilhet is a lecturer at Grenoble University, Pierre Mendès France. He has worked on the spectral behavior of fractional Brownian motion, and particularly on the estimation of its spectral density. Rémy has contributed to spatial point processes through the research group he formed with Jean Michel Billot and Etienne Bertin. Over the 7 years of their intense collaboration, they have obtained many results concerning existence, unicity and percolation in the framework of spatial point processes based on nearest neighbor interactions. Rémy now works with the FIGAL team on issues of reliability. He is an experienced user and developer of R which he uses both in his research and in his teaching. Benoit Liquet obtained his PhD in Biostatistics and his research first focused on model selection approach applied to biomedical studies. He has researched and taught at INSERM (French National Institute of Health) and the Universities of Montpellier and Bordeaux. Recently, Benoit has worked on the analysis of omics data in the context of HIV vaccine studies. He spent six months (during his sabbatical leave in 2011/2012) working full time at the Queensland Facility for Advanced Bioinformatics (QFAB), based at the University of Queensland, to develop novel methodologies within this context. Benoit finished his sabbatical leave in the MRC (medical research council) BSU (Biostatistics Unit) in Cambridge on Bayesian variable selection methods for high dimensional data. He is presently working as Senior Investigator Statistician at the MRC BSU. He is an enthusiastic user and developer of R. Tab Content 6Author Website:Countries AvailableAll regions |