# Learn R for Applied Statistics

## With Data Visualizations, Regressions, and Statistics

Book

1. Front Matter
Pages i-xv
2. Eric Goh Ming Hui
Pages 1-18
3. Eric Goh Ming Hui
Pages 19-37
4. Eric Goh Ming Hui
Pages 39-86
5. Eric Goh Ming Hui
Pages 87-127
6. Eric Goh Ming Hui
Pages 129-172
7. Eric Goh Ming Hui
Pages 173-236
8. Back Matter
Pages 237-243

### Introduction

Gain the R programming language fundamentals for doing the applied statistics useful for data exploration and analysis in data science and data mining. This book covers topics ranging from R syntax basics, descriptive statistics, and data visualizations to inferential statistics and regressions. After learning R’s syntax, you will work through data visualizations such as histograms and boxplot charting, descriptive statistics, and inferential statistics such as t-test, chi-square test, ANOVA, non-parametric test, and linear regressions.

Learn R for Applied Statistics is a timely skills-migration book that equips you with the R programming fundamentals and introduces you to applied statistics for data explorations.

You will:
• Discover R, statistics, data science, data mining, and big data
• Master the fundamentals of R programming, including variables and arithmetic, vectors, lists, data frames, conditional statements, loops, and functions
• Work with descriptive statistics
• Create data visualizations, including bar charts, line charts, scatter plots, boxplots, histograms, and scatterplots
• Use inferential statistics including t-tests, chi-square tests, ANOVA, non-parametric tests, linear regressions, and multiple linear regressions

### Keywords

Statistics R Data Science Data Mining Data Vizualisation Data Exploration Data Analytics Machine Learning Natural Language Processing

#### Authors and affiliations

1. 1.SingaporeSingapore

Eric Goh is a data scientist, software engineer, adjunct faculty and entrepreneur with years of experiences in multiple industries. His varied career includes data science, data and text mining, natural language processing, machine learning, intelligent system development, and engineering product design.Eric Goh has been leading his teams for various industrial projects, including the advanced product code classification system project which automates Singapore Custom’s trade facilitation process, and Nanyang Technological University's data science projects where he develop his own DSTK data science software. He has years of experience in C#, Java, C/C++, SPSS Statistics and Modeller, SAS Enterprise Miner, R, Python, Excel, Excel VBA and etc. He won Tan Kah Kee Young Inventors' Merit Award and Shortlisted Entry for TelR Data Mining Challenge. Eric Goh founded the SVBook website to offer affordable books, courses and software in data science and programming.

He holds a Masters of Technology degree from the National University of Singapore, an Executive MBA degree from U21Global (currently GlobalNxt) and IGNOU, a Graduate Diploma in Mechatronics from A*STAR SIMTech (a national research institute located in Nanyang Technological University), and Coursera Specialization Certificate in Business Statistics and Analysis from Rice University. He possessed a Bachelor of Science degree in Computing from the University of Portsmouth after National Service. He is also a AIIM Certified Business Process Management Master (BPMM), GSTF certified Big Data Science Analyst (CBDSA), and IES Certified Lecturer.

### Bibliographic information

• Book Title Learn R for Applied Statistics
• Book Subtitle With Data Visualizations, Regressions, and Statistics
• Authors Eric Goh Ming Hui
• DOI https://doi.org/10.1007/978-1-4842-4200-1
• Copyright Information Eric Goh Ming Hui 2019
• Publisher Name Apress, Berkeley, CA
• eBook Packages Professional and Applied Computing Professional and Applied Computing (R0)
• Softcover ISBN 978-1-4842-4199-8
• eBook ISBN 978-1-4842-4200-1
• Edition Number 1
• Number of Pages XV, 243
• Number of Illustrations 111 b/w illustrations, 0 illustrations in colour
• Topics
• Buy this book on publisher's site
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