Название: Modern Data Visualization with R Автор: Robert Kabacoff Издательство: CRC Press Серия: The R Series Год: 2024 Страниц: 272 Язык: английский Формат: pdf (true) Размер: 33.4 MB
Modern Data Visualization with R describes the many ways that raw and summary data can be turned into visualizations that convey meaningful insights. R is an amazing platform for data analysis, capable of creating almost any type of graph. This book helps you create the most popular visualizations–from quick and dirty plots to publication-ready graphs. The text relies heavily on the ggplot2 package for graphics, but other approaches are covered as well. It starts with basic graphs such as bar charts, scatter plots, and line charts, but progresses to less well-known visualizations such as tree maps, alluvial plots, radar charts, mosaic plots, effects plots, correlation plots, biplots, and the mapping of geographic data. Both static and interactive graphics are described and the use of color, shape, shading, grouping, annotation, and animations are covered in detail. The book moves from a default look and feel for graphs, to graphs with customized colors, fonts, legends, annotations, and organizational themes.
Features:
• Contains a wide breadth of graph types including newer and less well-known approaches • Connects each graph type to the characteristics of the data and the goals of the analysis • Moves the reader from simple graphs describing one variable to building visualizations that describe complex relationships among many variables • Provides newer approaches to creating interactive web graphics via jаvascript libraries • Details how to customize each graph type to meet users’ needs and those of their audiences • Gives methods for creating visualizations that are publication ready for print (in color or black and white) and the web • Suggests best practices • Offers examples from a wide variety of fields
Pre-requisites: It’s assumed that you have some experience with the R language and that you have already installed R and RStudio.
The book is written for those new to data analysis as well as the seasoned data scientist. It can be used for both teaching and research, and will particularly appeal to anyone who needs to describe data visually and wants to find and emulate the most appropriate method quickly. The reader should have some basic coding experience, but expertise in R is not required. Some of the later chapters (e.g., visualizing statistical models) assume exposure to statistical inference at the level of analysis of variance and regression.
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