Beginning R 4 Beginning R 4

Beginning R 4

From Beginner to Pro

    • €49.99
    • €49.99

Publisher Description

Learn how to use R 4, write and save R scripts, read in and write out data files, use built-in functions, and understand common statistical methods. This in-depth tutorial includes key R 4 features including a new color palette for charts, an enhanced reference counting system (useful for big data), and new data import settings for text (as well as the statistical methods to model text-based, categorical data). 
Each chapter starts with a list of learning outcomes and concludes with a summary of any R functions introduced in that chapter, along with exercises to test your new knowledge. The text opens with a hands-on installation of R and CRAN packages for both Windows and macOS. The bulk of the book is an introduction to statistical methods (non-proof-based, applied statistics) that relies heavily on R (and R visualizations) to understand, motivate, and conduct statistical tests and modeling.
Beginning R 4 shows the use of R in specific cases such as ANOVA analysis, multiple and moderated regression, data visualization, hypothesis testing, and more. It takes a hands-on, example-based approach incorporating best practices with clear explanations of the statistics being done.
You will:Acquire and install R and RStudioImport and export data from multiple file formatsAnalyze data and generate graphics (including confidence intervals)Interactively conduct hypothesis testingCode multiple and moderated regression solutions

GENRE
Computing & Internet
RELEASED
2020
17 October
LANGUAGE
EN
English
LENGTH
487
Pages
PUBLISHER
Apress
PROVIDER INFO
Springer Science & Business Media LLC
SIZE
24.5
MB
Machine Learning with R Machine Learning with R
2017
Statistical Modeling and Machine Learning for Molecular Biology Statistical Modeling and Machine Learning for Molecular Biology
2017
Computational Methods in Biometric Authentication Computational Methods in Biometric Authentication
2010
Excel for Scientists and Engineers Excel for Scientists and Engineers
2005
Principles and Theory for Data Mining and Machine Learning Principles and Theory for Data Mining and Machine Learning
2009
Advanced R 4 Data Programming and the Cloud Advanced R 4 Data Programming and the Cloud
2020
Advanced R Statistical Programming and Data Models Advanced R Statistical Programming and Data Models
2019
Advanced R Advanced R
2016