data visualization and graphic design introducing r for data visualization allan just and andrew...
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Data visualization and graphic designIntroducing R for data visualization
Allan Just and Andrew RundleEPIC Short CourseJune 21, 2011
Wickham 2008
Intro to RObjectivesAfter this class, participants will be able to:
1. Describe some capabilities and uses of R
2. Search for help within R and use good coding practices for reproducible research in R
3. Read in and summarize a simple dataset with R/JGR/Deducer
4. Make some standard plots with Deducer templates
What is R?
nytimes.com
R has many uses• Work with data: subset, merge, and transform
datasets with a powerful syntax
• Analysis: use existing statistical functions like regression or write your own
• Graphics: graphs can be made quickly during analysis and polished for publication quality displays
Why learn a whole language to look at data versus Excel?
1. Recreate/redo your exact analysis
2. Automate repetitive tasks
3. Access to statistical methods not available in Excel
4. Graphs are more elegant
1. It's free!
2. It runs on Mac, Windows, and Linux
3. It has state-of-the-art graphics capabilities
4. It contains advanced statistical routines not yet available in other packages – a de facto standard in statistics
5. Can program new statistical methods or automate data manipulation/analysis
adapted from statmethods.net
Why R versusSAS, SPSS, or Stata?
Made in SAS Redone in R
learnr.wordpress.com
R plots from my own research
Scatterplot matrixbivariate densities and correlations
Forest plot to compare parameter estimates from many models
Displaying lots of data: facetted histograms
Plotting data with a model
Automated report generation
Shapefile: CIESIN, Columbia University Asthma data: http://nyc.gov/html/doh/downloads/pdf/asthma/asthma-hospital.pdf
Choropleth map
Intro to R: recapObjectivesAfter this class, participants will be able to:
1. Describe some capabilities and uses of R
Statistical data analysis
Automation (scripting) of functions to work with data
Elegant graphics to facilitate data visualization
2. Search for help within R and use good coding practices for reproducible research in R
3. Read in and summarize a simple dataset with R/JGR/Deducer
4. Make some standard plots with Deducer templates
Learning a new language is difficult
flickr.com/photos/dnorman/3732851541/
What makes R difficult to learn
R is designed to be flexible and powerful rather than simple but limited.
R is a fully featured language mainly used from the command line. Learning the commands and the structure of the code takes time and practice.
If I made a a typo you would know what I meant...
What makes R difficult to learn
R is designed to be flexible and powerful rather than simple but limited.
The solution: be carefulbuild code in simple pieces and test as you go (learn to debug). Reuse code that works. Use helpful resources. Consider an alternative GUI for R.
Getting help in RYou can call for help on a function with a leading question mark and leaving off the ()?functionname
Search online
statmethods.net
An Introduction to Rin Windows found under Help – Manuals (in PDF)
Suggestions for an R workflowSave the bits of your code that work in a text editor - building a
script of clean code that works from start-to-finish.
With clean code instead of transformed data files it is easier to redo analyses if your data are updated or you want to change an earlier step
Leave yourself informative comments# everything to the right of the pound sign# is unevaluated
Using spaces and indents can help readabilityUse meaningful names for objects
Reproducible research!
Intro to R: recapObjectivesAfter this class, participants will be able to:
1. Describe some capabilities and uses of R
2. Search for help within R and use good coding practices for reproducible research in R
?t.test will bring up R help
Free manuals online: Introduction to R Also: statmethods.net
#use comments; save the code that works to reproduce your results
3. Read in and summarize a simple dataset with R/JGR/Deducer
4. Make some standard plots with Deducer templates
Learning the languageMany important features
• Arithmetic and logical operators: +, <, …
• Data types: numeric, logical, …
• Data structures: vectors, matrices, …
• Functions – always end with (): median(x)
Using R as a calculator
Mathematical operators+ - / * ^
log()abs()
R can evaluate logical expressions
== equal!= not equal& and| or (vertical pipe)
10 < 20[1] TRUEpi > 3 & 2^2 == 4[1] TRUE"This" != "That"[1] TRUE
Creating new objects
Assignment operator is <- (looks like an arrow)x <- 10“Set x to take the value 10”
The symbols in this operator must be adjacent. x < - 10 What does this do?
You can overwrite old valuesx <- x^2“Set x to take the value x2”
Indexing and subsettingConcatenate function is c() x <- c(10, 20, 30) x[1] 10 20 30
Refer to components of objects by a position index which goes between square braces
x[2] return the second position in x[1] 20 x[c(1, 2)] return the first and second position in x[1] 10 20 x[-3] return all except the third position in x[1] 10 20
What would x[c(3, 2)] return?
Data framesA data frame is a rectangular collection of data
Rows: observationsColumns: variables
diamonds <- data.frame(carat, cut, price) carat cut price1 0.23 Ideal 3262 0.21 Premium 3263 0.23 Good 3274 0.29 Premium 3345 0.31 Good 3356 0.24 Very Good 336
Data framesYou can extract the variables as vectors with a $ diamonds$cut You can also index by position (or name) with square bracesdiamonds[2, 3] returns the single value in row 2, column 3
An empty index is treated like a wildcard and corresponds to all rows or columns depending on position
diamonds[, "cut"] (same result as diamonds$cut)
How would you return the first three rows and all columns?
row, column
R functionsThousands of functions are built-in:
median() lm() linear model
t.test() chisq.test()
or make your own:
inch.to.cm <- function(x){x * 2.54}
inch.to.cm(74)
[1] 187.96
Missing valuesThese take a value of NA Can be in a data object of any type (logical, numeric, character)
By default operations on NA will return NANA == NA[1] NA
Can check for NA with is.na()y <- c(2, 10, NA, 12)is.na(y) [1] FALSE FALSE TRUE FALSE
Can often pass na.rm = T option to remove NA values in operationsmean(y)[1] NAmean(y, na.rm = T)[1] 8
R has several thousandadditional packages
time seriessurvivalspatialmachine learningbioinformatics
Interfaces to Excel, SQL databases, Twitter, google maps…
Installing a package
1. Open up R2. Click in to the console window and type:install.packages()3. Select a mirror (anywhere in the US)4. Find and select "Deducer" and choose OK.5. This will download Deducer and the other
packages which it requires, including ggplot2.
The default R graphical user interface (Windows)
JGR
Deducer
Recap on GUIs
R Default Windows GUI: lacks additional features to make learning or programming easier
JGR: Makes programming easier with syntax highlighting and command argument suggestions. No menus for stats. Looks the same across platforms (Java based)
Deducer: Adds menus for basic stats to JGR. Menu driven graphics options (building with ggplot2).
R graphics – 3 main "dialects"Base: with(airquality, plot(Temp, Ozone)) Lattice: xyplot(Ozone ~ Temp, airquality)
ggplot2: ggplot(airquality, aes(Temp, Ozone)) + geom_point( )
Google image search: ggplot2
ggplot2 philosophy
Written by Hadley Wickham (Rice Univ.)Extends The Grammar of Graphics (Wilkinson, 2005)
All graphs can be constructed by combining specifications with data (Wilkinson, 2005).
A specification is a structured way to describe how to build the graph from geometric objects (points, lines, etc.) projected on to scales (x, y, color, size, etc.)
ggplot2 philosophyWhen you can describe the content of the graph with the grammar, you don’t need to know the name of a particular type of plot…
Dot plot, forest plot, Manhattan plot are just special cases of this formal grammar.
…a plotting system with good defaults for a large set of components that can be combined in flexible and creative ways…
Building a plot in ggplot2
data to visualize (a data frame)map variables to aesthetic attributes
geometric objects – what you see (points, bars, etc)scales map values from data to aesthetic space
faceting subsets the data to show multiple plots statistical transformations – summarize datacoordinate systems put data on plane of graphic
Wickham 2009
A basic ggplot2 graphggplot(airquality) + geom_point(aes(x = Temp, y = Ozone))
DataAesthetics map variables to scales
Geometric objects to display
A ggplot2 graph is an R objectp <- ggplot(airquality) + geom_point(aes(x = Temp, y = Ozone))str(p) #structure of p
List of 8 $ data :'data.frame': 153 obs. of 6 variables: ..$ Ozone : int [1:153] 41 36 12 18 NA 28 23 19 8 NA ... ..$ Solar.R: int [1:153] 190 118 149 313 NA NA 299 99 19 194 ... ..$ Wind : num [1:153] 7.4 8 12.6 11.5 14.3 14.9 8.6 13.8 20.1 8.6 ... ..$ Temp : int [1:153] 67 72 74 62 56 66 65 59 61 69 ... ..$ Month : int [1:153] 5 5 5 5 5 5 5 5 5 5 ... ..$ Day : int [1:153] 1 2 3 4 5 6 7 8 9 10 ... $ layers :List of 1 ..$ :proto object .. .. $ mapping :List of 2 .. .. ..$ x: symbol Temp .. .. ..$ y: symbol Ozone .. .. $ geom_params:List of 1 .. .. ..$ na.rm: logi FALSE ...$ plot_env :<environment: R_GlobalEnv> - attr(*, "class")= chr "ggplot"
shortened substantially
Note that the internal plot specification includes the data
So if you update the data, update the call to ggplot()
Help with learning ggplot2Website: had.co.nz/ggplot2/Thousands of examples!
Book:ggplot2: Elegant Graphics for
Data AnalysisHadley Wickham, 2009
Graphic User Interface:Deducer (R package)Ian Fellows
Intro to R: recapObjectivesAfter this workshop participants will be able to:
1. Describe some capabilities and uses of R
2. Search for help within R and use good coding practices for reproducible research in R
3. Read in and summarize a simple dataset with R/JGR/Deducer
Together, let’s explore some data from the WHO - Global School Health Survey.
I will also give you a script containing code which you can run, modify, and take home!
4. Make some standard plots with Deducer templates
Open JGR -
Load the Deducer package
Note additional menus
Intro to R: recapObjectivesAfter this workshop participants will be able to:
1. Describe some capabilities and uses of R
2. Search for help within R and use good coding practices for reproducible research in R
3. Read in and summarize a simple dataset with R/JGR/Deducer
4. Make some standard plots with Deducer templates
Using the gshs dataframe – let's make some plots together using templates in:
Deducer → Plots → Plot Builder
Since R, JGR, and Deducer are free, you should install them at home or
work and play with them!
Installing R, JGR, DeducerPart I: R on Windows (shown), or Mac, or Linux
R is available from a set of mirrors known as The Comprehensive R Archive Network (CRAN)http://cran.r-project.org/
Closest mirror and link for windows:http://software.rc.fas.harvard.edu/mirrors/R/bin/windows/base/
Uses a Windows installer – default options are fine
Installing R, JGR, DeducerPart II: JGR on Windows (shown), or Mac, or Linux
JGR requires a Java Development Kit (JDK)You probably don't have this* Available free at:http://www.oracle.com/technetwork/java/javase/downloads/index.html
*if you did have a JDK (and not just a JRE) you would have a folder named something like …C:\Program Files\Java\jdk1.6.0_20\
Installing R, JGR, DeducerPart II: JGR on Windows (shown), or Mac, or Linux
JGR requires a launcher file on Windows:http://www.rforge.net/JGR/web-files/jgr-1_62.exe
Leave this as your desktop shortcut
Installing R, JGR, DeducerPart III: Installing Deducer
Deducer is an R package
From within JGR To install packages: Packages & Data -> Package Installer To load packages: Packages & Data -> Package Manager
A few helpful R linksDownload R: http://cran.r-project.org/ available for Windows, Mac OS X, and Linux
Advice – A clearly stated question with a reproducible example is far more likely to get help. You will often find your own solution by restating where you are getting stuck in a clear and concise way.
Writing reproducible examples: https://gist.github.com/270442
General R linkshttp://statmethods.net/ Quick-R for SAS/SPSS/Stata Users - An all around excellent reference sitehttp://www.ats.ucla.edu/stat/R/ Resources for learning R from UCLA with lots of exampleshttp://www.r-bloggers.com/learning-r-for-researchers-in-psychology/ This is a nice listing of R resourceshttp://stackoverflow.com/questions/tagged/r Q&A forum for R programming questions - lots of good help!see also: http://crossvalidated.com for general stats & Rhttp://rstudio.org Integrated Development Environment for command line programming with R
ggplot2 linkshttp://had.co.nz/ggplot2/ ggplot2 help & reference – lots of exampleshttp://groups.google.com/group/ggplot2 ggplot2 user group – great for posting questionshttps://github.com/hadley/ggplot2/wiki ggplot2 wiki: answers many FAQs, tips & tricks
http://www.slideshare.net/hadley/presentations Over 100 presentations by Hadley Wickham, author of ggplot2. A four-part video of a ½ day workshop by him starts here: http://had.blip.tv/file/3362248/
Setting up JGR in WindowsJGR requires a JDK – speak to your IT person if this seems daunting (http://www.oracle.com/technetwork/java/javase/downloads/index.html )On Windows, JGR needs to be started from a launcher. For R version 2.13.0 on Windows with a 32bit R you will likely want to get the file jgr-1_62.exe as a
launcher from here: http://www.rforge.net/JGR/A discussion of the features of JGR can be found in this article (starting on page 9): http://stat-computing.org/newsletter/issues/scgn-16-2.pdf
Deducer - an R package which works best in a working instance of JGR – has drop-down menus for ggplot2 functionalityhttp://www.deducer.org/pmwiki/pmwiki.php?n=Main.DeducerManual
There are great videos linked here introducing the Deducer package (although the volume is quite low)This slide last updated 06/19/2011