Item type | Current library | Collection | Shelving location | Call number | Status | Date due | Barcode | Item holds | |
---|---|---|---|---|---|---|---|---|---|
Books | BITS Pilani Hyderabad | 510 | General Stack (For lending) | 519.5028 WIL-M (Browse shelf(Opens below)) | Checked out | 14/01/2025 | 45852 |
Browsing BITS Pilani Hyderabad shelves, Shelving location: General Stack (For lending), Collection: 510 Close shelf browser (Hides shelf browser)
519.5028 SCH-J Statistical analysis with Excel / | 519.5028 TEE-P R Cookbook | 519.5028 TOL-M R quick syntax reference : a pocket guide to the language, APIs and library / | 519.5028 WIL-M Advanced R statistical programming and data models : analysis, machine learning, and visualization / | 519.50285 EUB-R Statistical computing in C++ and R / | 519.50285 EVE-B Handbook of statistical analyses using R / | 519.50285 FAR-J Linear models with python / |
Carry out a variety of advanced statistical analyses including generalized additive models, mixed effects models, multiple imputation, machine learning, and missing data techniques using R. Each chapter starts with conceptual background information about the techniques, includes multiple examples using R to achieve results, and concludes with a case study.
Written by Matt and Joshua F. Wiley, Advanced R Statistical Programming and Data Models shows you how to conduct data analysis using the popular R language. You’ll delve into the preconditions or hypothesis for various statistical tests and techniques and work through concrete examples using R for a variety of these next-level analytics. This is a must-have guide and reference on using and programming with the R language.
What You’ll Learn
Conduct advanced analyses in R including: generalized linear models, generalized additive models, mixed effects models, machine learning, and parallel processing
Carry out regression modeling using R data visualization, linear and advanced regression, additive models, survival / time to event analysis
Handle machine learning using R including parallel processing, dimension reduction, and feature selection and classification
Address missing data using multiple imputation in R
Work on factor analysis, generalized linear mixed models, and modeling intra individual variability.
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