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About

All About Tableau

All About R

 



Getting Started with R

R Packages for Data Visualisation

ggplot2

ggplot2 Core

  • ggplot2 [1]
  • ggplot2 – The R graph Gallery [2]
  • Introduction to R Graphics with ggplot2 [3]
  • ggplot2 - A Short Tutorial [4]
  • ggplot2 介紹

ggplots Extension

  • ggVis
  • ggmap
  • ggtern, an extension to ggplot2 specifically for the plotting of ternary diagrams [5]
  • ggExtra, a collection of functions and layers to enhance ggplot2. The main function is ggMarginal, which can be used to add marginal histograms/boxplots/density plots to ggplot2 scatterplots. [6]
  • ggthemes, some extra themes, geoms, and scales for 'ggplot2'. Provides 'ggplot2' themes and scales that replicate the look of plots by Edward Tufte, Stephen Few, 'Fivethirtyeight', 'The Economist', 'Stata', 'Excel', and 'The Wall Street Journal', among others. Provides 'geoms' for Tufte's box plot and range frame. [7]
  • ggigraph lets R users to make ggplot interactive. [8]
  • GGally extends 'ggplot2' by adding several functions to reduce the complexity of combining geometric objects with transformed data. Some of these functions include a pairwise plot matrix, a two group pairwise plot matrix, a parallel coordinates plot, a survival plot, and several functions to plot networks. [9]
  • sjPlot-package, Data Visualization for Statistics in Social Science [10]
  • ggstatsplot is an extension of ggplot2 package for creating graphics with details from statistical tests included in the plots themselves and targeted primarily at behavioral sciences community to provide a one-line code to produce information-rich plots.

Books

Articles/Blog posts

Webminers


Interactive Data Visualisation with R

plotly R


Other R graphics packages

  • corrplot [11]. A graphical display of a correlation matrix or general matrix. It also contains some algorithms to do matrix reordering. In addition, corrplot is good at details, including choosing color, text labels, color labels, layout, etc.
  • corrgram [12] calculates correlation of variables and displays the results graphically. Included panel functions can display points, shading, ellipses, and correlation values with confidence intervals. [13]
  • vcd, Visualization techniques, data sets, summary and inference procedures aimed particularly at categorical data. Special emphasis is given to highly extensible grid graphics. [14]
  • tmap [15] offers a flexible, layer-based, and easy to use approach to create thematic maps, such as choropleths and bubble maps.


Web-based Visual Analytics Development tool in R

Getting Started


Shiny Applications


github

R Markdown

Creating coursework blog

Distill


Blogdown

Book

blog articles