R Visualizations: Derive Meaning from Data

R Visualizations: Derive Meaning from Data

作者: Gerbing David
出版社: CRC
出版在: 2020-05-12
ISBN-13: 9781138599635
ISBN-10: 1138599638
裝訂格式: Hardcover - also called cloth, retail trade, or trade
總頁數: 247 頁





內容描述


R Visualizations: Deriving Meaning from Data focuses on one of the two major topics of data analytics: data visualization, a.k.a., computer graphics. In the book, major R systems for visualization are discussed, organized by topic and not by system. Anyone doing data analysis will be shown how to use R to generate any of the basic visualizations with the R visualization systems. Further, this book introduces the author's lessR system, which always can accomplish a visualization with less coding than the use of other systems, sometimes dramatically so, and also provides accompanying statistical analyses.
Key Features                    

Presents thorough coverage of the leading R visualization system, ggplot2.
Gives specific guidance on using base R graphics to attain visualizations of the same quality as those provided by ggplot2.
Offers instruction in the author's visualization system, lessR, which is generally less verbose than ggplot2 and lattice.
Inclusion of the various approaches to R graphics organized by topic instead of by system.
Presents the recent work on interactive visualization in R.

David W. Gerbing received his PhD from Michigan State University in 1979 in quantitative analysis, and currently is a professor of quantitative analysis in the School of Business at Portland State University. He has published extensively in the social and behavioral sciences with a focus on quantitative methods. His lessR package has been in development since 2009.


作者介紹


David W. Gerbing has a Quantitative Methods B.A. from Western Washington State College, and M.A. from Michigan State University, and a Ph.D. from Michigan State University. Dr. Gerbing teaches statistics, quantitative methods, and business research techniques. His research interests are in the areas of quantitative analysis, multivariate statistics, and behavioral measurement and assessment. Currently his primary interest is in the increasing the accessibility of the R programming language for data science so that non-programmers can access the free, open source data analysis system without a steep learning curve.




相關書籍

TensorFlow技術解析與實戰

作者 李嘉璇

2020-05-12

Google Bigquery: The Definitive Guide: Data Warehousing, Analytics, and Machine Learning at Scale

作者 Lakshmanan Valliappa Tigani Jordan

2020-05-12

A Practitioner's Guide to Resampling for Data Analysis, Data Mining, and Modeling (Hardcover)

作者 Phillip Good

2020-05-12