Basic plotting systems

  1. Base graphics: constructed piecemeal. Conceptually simpler and allows plotting to mirror the thought process.
  2. Lattice graphics: entire plots created in a simple function call.
  3. ggplot2 graphics: an implementation of the Grammar of Graphics by Leland Wikinson. Combines concepts from both base and lattice graphics. (Need to install ggplot2 library)
  4. Fancier and more telling ones.

A list of interactive visualization in R can be found at: http://ouzor.github.io/blog/2014/11/21/interactive-visualizations.html

Base plotting system

library(datasets)
## scatter plot
plot(x = airquality$Temp, y = airquality$Ozone)

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Base plotting system

## par() function is used to specify global graphics parameters that affect all plots in an R session.
## Type ?par to see all parameters
par(mfrow = c(1, 2), mar = c(4, 4, 2, 1), oma = c(0, 0, 2, 0))
with(airquality, {
    plot(Wind, Ozone, main="Ozone and Wind")
    plot(Temp, Ozone, main="Ozone and Temperature")
    mtext("Ozone and Weather in New York City", outer=TRUE)})

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Plotting functions (high level)

PHASE ONE: Mount a canvas panel on the easel, and draw the draft. (Initialize a plot.)

  • plot(): one of the most frequently used plotting functions in R.
  • boxplot(): a boxplot show the distribution of a vector. It is very useful to example the distribution of different variables.
  • barplot(): create a bar plot with vertical or horizontal bars.
  • hist(): compute a histogram of the given data values.
  • pie(): draw a pie chart.

Remember to use ?plot or str(plot), etc. to check the arguments when you want to make more personalized plots. A tutorial of base plotting system with more details: http://bcb.dfci.harvard.edu/~aedin/courses/BiocDec2011/2.Plotting.pdf

Plotting functions (low level)

PHASE TWO: Add more details on your canvas, and make an artwork. (Add more on an existing plot.)

  • lines: adds liens to a plot, given a vector of x values and corresponding vector of y values
  • points: adds a point to the plot
  • text: add text labels to a plot using specified x,y coordinates
  • title: add annotations to x,y axis labels, title, subtitles, outer margin
  • mtext: add arbitrary text to margins (inner or outer) of plot
  • axis: specify axis ticks

Save your artwork

R can generate graphics (of varying levels of quality) on almost any type of display or printing device. Like:

  • postscript(): for printing on PostScript printers, or creating PostScript graphics files.
  • pdf(): produces a PDF file, which can also be included into PDF files.
  • jpeg(): produces a bitmap JPEG file, best used for image plots.

help(Devices) for a list of them all. Simple example:

## png(filename = 'plot1.png', width = 480, height = 480, units = 'px')
## plot(x, y)
## dev.off()

Example: boxplot and hitogram

## the layout
par(mfrow = c(2, 1), mar = c(2, 0, 2, 0), oma = c(0, 0, 0, 0))
## histogram at the top
hist(airquality$Ozone, breaks=12, main = "Histogram of Ozone")
## box plot below for comparison
boxplot(airquality$Ozone, horizontal=TRUE, main = "Box plot of Ozone")

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Lattice plotting system

library(lattice) # need to load the lattice library
set.seed(10) # set the seed so our plots are the same
x <- rnorm(100)
f <- rep(1:4, each = 25) # first 25 elements are 1, second 25 elements are 2, ...
y <- x + f - f * x+ rnorm(100, sd = 0.5)
f <- factor(f, labels = c("Group 1", "Group 2", "Group 3", "Group 4"))
# first 25 elements are in Group 1, second 25 elements are in Group 2, ...
xyplot(y ~ x | f)

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Lattice plotting system

Want more on the plot? Customize the panel funciton:

xyplot(y ~ x | f, panel = function(x, y, ...) {
    # call the default panel function for xyplot
    panel.xyplot(x, y, ...)
    # adds a horizontal line at the median
    panel.abline(h = median(y), lty = 2)
    # overlays a simple linear regression line
    panel.lmline(x, y, col = 2) 
})

Lattice plotting system

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Lattice plotting system

Plotting functions

  • xyplot(): main function for creating scatterplots
  • bwplot(): box and whiskers plots (box plots)
  • histogram(): histograms
  • stripplot(): box plot with actual points
  • dotplot(): plot dots on "violin strings"
  • splom(): scatterplot matrix (like pairs() in base plotting system)
  • levelplot()/contourplot(): plotting image data

Very useful when we want a lot...

pairs(iris) ## iris is a data set in R

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ggplot2

  • An implementation of the Grammar of Graphics by Leland Wikinson
  • Written by Hadley Wickham (while he was a graduate student as lowa State)
  • A "third" graphics system for R (along with base and lattice)
    Available from CRAN via install.packages()
    web site: http://ggplot2.org (better documentation)
  • Grammar of graphics represents the abstraction of graphics ideas/objects
    Think "verb", "noun", "adjective" for graphics
    "Shorten" the distance from mind to page
  • Two main functions:
    qplot() hides what goes on underneath, which is okay for most operations ggplot() is the core function and very flexible for doing this qplot() cannot do

qplot function

The qplot() function is the analog to plot() but with many build-in features
Syntax somewhere in between base/lattice
Difficult to be customized (don't bother, use full ggplot2 power in that case)

library(ggplot2) ## need to install and load this library
qplot(displ, hwy, data = mpg, facets = .~drv)

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ggplot function

When building plots in ggplot2 (ggplot, rather than using qplot)
The "artist's palette" model may be the closest analogy
Plots are built up in layers

  • Step I: Input the data
    noun: the data
library(ggplot2) ## need to install and load this library
g <- ggplot(iris, aes(Sepal.Length, Sepal.Width)) ## this would not show you add plot

ggplot function

  • Step II: Add layers
    adjective: describe the type of plot you will produce.
g + geom_point() + geom_smooth(method = "lm") + facet_grid(. ~ Species)

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ggplot function

  • Step III: Add metadata and annotation
    adjective: control the mapping between data and aesthetics.
g <- g + geom_point() + geom_smooth(method = "lm") + facet_grid(. ~ Species)  
g + ggtitle("Sepal length vs. width for different species") + theme_bw() ## verb

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Great documentation

Great documentation of ggplot with all functions in step II and III and demos:
http://docs.ggplot2.org/current/

Titanic tragedy data

Reading RAW training data

titanic = read.csv('Titanic_train.csv')

Look at the first few rows

What would be some good features to consider here?

options(width = 110)
head(titanic)
##   PassengerId Survived Pclass                                                Name    Sex Age SibSp Parch
## 1           1        0      3                             Braund, Mr. Owen Harris   male  22     1     0
## 2           2        1      1 Cumings, Mrs. John Bradley (Florence Briggs Thayer) female  38     1     0
## 3           3        1      3                              Heikkinen, Miss. Laina female  26     0     0
## 4           4        1      1        Futrelle, Mrs. Jacques Heath (Lily May Peel) female  35     1     0
## 5           5        0      3                            Allen, Mr. William Henry   male  35     0     0
## 6           6        0      3                                    Moran, Mr. James   male  NA     0     0
##             Ticket    Fare Cabin Embarked
## 1        A/5 21171  7.2500              S
## 2         PC 17599 71.2833   C85        C
## 3 STON/O2. 3101282  7.9250              S
## 4           113803 53.1000  C123        S
## 5           373450  8.0500              S
## 6           330877  8.4583              Q

What is the data type of each column?

sapply(titanic,class)
## PassengerId    Survived      Pclass        Name         Sex         Age 
##   "integer"   "integer"   "integer"    "factor"    "factor"   "numeric" 
##       SibSp       Parch      Ticket        Fare       Cabin    Embarked 
##   "integer"   "integer"    "factor"   "numeric"    "factor"    "factor"

Converting class label to a factor

titanic$Survived = factor(titanic$Survived, labels=c("died", "survived"))
titanic$Embarked = factor(titanic$Embarked, labels=c("unkown", "Cherbourg", "Queenstown", "Southampton"))
sapply(titanic,class)
## PassengerId    Survived      Pclass        Name         Sex         Age 
##   "integer"    "factor"   "integer"    "factor"    "factor"   "numeric" 
##       SibSp       Parch      Ticket        Fare       Cabin    Embarked 
##   "integer"   "integer"    "factor"   "numeric"    "factor"    "factor"
str(titanic$Survived)
##  Factor w/ 2 levels "died","survived": 1 2 2 2 1 1 1 1 2 2 ...
str(titanic$Sex)
##  Factor w/ 2 levels "female","male": 2 1 1 1 2 2 2 2 1 1 ...

Class distribution - PIE Charts

survivedTable = table(titanic$Survived)
survivedTable
## 
##     died survived 
##      549      342
par(mar = c(0, 0, 0, 0), oma = c(0, 0, 0, 0))
pie(survivedTable,labels=c("Died","Survived"))

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Is Sex a good predictor?

male = titanic[titanic$Sex=="male",]
female = titanic[titanic$Sex=="female",]
par(mfrow = c(1, 2), mar = c(0, 0, 2, 0), oma = c(0, 1, 0, 1))
pie(table(male$Survived),labels=c("Dead","Survived"),  main="Survival Portion Among Men")
pie(table(female$Survived),labels=c("Dead","Survived"), main="Survival Portion Among Women")

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Is Age a good predictor?

Age <- titanic$Age; summary(Age)
##    Min. 1st Qu.  Median    Mean 3rd Qu.    Max.    NA's 
##    0.42   20.12   28.00   29.70   38.00   80.00     177

How about summary segmented by survival

summary(titanic[titanic$Survived=="died",]$Age)
##    Min. 1st Qu.  Median    Mean 3rd Qu.    Max.    NA's 
##    1.00   21.00   28.00   30.63   39.00   74.00     125
summary(titanic[titanic$Survived=="survived",]$Age)
##    Min. 1st Qu.  Median    Mean 3rd Qu.    Max.    NA's 
##    0.42   19.00   28.00   28.34   36.00   80.00      52

Age distribution by Survival and Sex

par(mfrow = c(1, 2), mar = c(4, 4, 2, 2), oma = c(1, 1, 1, 1))
boxplot(titanic$Age~titanic$Sex, main="Age Distribution By Gender",col=c("red","green"))
boxplot(titanic$Age~titanic$Survived, main="Age Distribution By Survival",col=c("red","green"),
        xlab="0:Died 1:Survived",ylab="Age")

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Histogram of Age

hist(Age, col="blue", xlab="Age", ylab="Frequency",
     main = "Distribution of Passenger Ages on Titanic")

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Kernel density plot of age

d = density(na.omit(Age)) # density(Age) won't work, need to omit all NAs
plot(d, main = "kernel density of Ages of Titanic Passengers")
polygon(d, col="red", border="blue")

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Comparison of density plots of Age with different Sex

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Did Age have an impact on survival?

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Create categorical groupings: Adult vs Child

An example of feature engineering!

## Multi dimensional comparison            
Child <- titanic$Age # Isolating age.
## Now we need to create categories: NA = Unknown, 1 = Child, 2 = Adult
## Every age below 13 (exclusive) is classified into age group 1
Child[Child<13] <- 1
## Every child 13 or above is classified into age group 2
Child[Child>=13] <- 2
# Use labels instead of 0's and 1's
Child[Child==1] <- "Child"
Child[Child==2] <- "Adult"
# Appends the new column to the titanic dataset
titanic_with_child_column <- cbind(titanic, Child)
# Removes rows where age is NA
titanic_with_child_column <- titanic_with_child_column[!is.na(titanic_with_child_column$Child),]

Fare matters?

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How about fare, ship class, port embarkation?

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Diamond data

Overview of the diamond data

data(diamonds) # loading diamonds data set
head(diamonds, 16) # first few rows of diamond data set
##    carat       cut color clarity depth table price    x    y    z
## 1   0.23     Ideal     E     SI2  61.5    55   326 3.95 3.98 2.43
## 2   0.21   Premium     E     SI1  59.8    61   326 3.89 3.84 2.31
## 3   0.23      Good     E     VS1  56.9    65   327 4.05 4.07 2.31
## 4   0.29   Premium     I     VS2  62.4    58   334 4.20 4.23 2.63
## 5   0.31      Good     J     SI2  63.3    58   335 4.34 4.35 2.75
## 6   0.24 Very Good     J    VVS2  62.8    57   336 3.94 3.96 2.48
## 7   0.24 Very Good     I    VVS1  62.3    57   336 3.95 3.98 2.47
## 8   0.26 Very Good     H     SI1  61.9    55   337 4.07 4.11 2.53
## 9   0.22      Fair     E     VS2  65.1    61   337 3.87 3.78 2.49
## 10  0.23 Very Good     H     VS1  59.4    61   338 4.00 4.05 2.39
## 11  0.30      Good     J     SI1  64.0    55   339 4.25 4.28 2.73
## 12  0.23     Ideal     J     VS1  62.8    56   340 3.93 3.90 2.46
## 13  0.22   Premium     F     SI1  60.4    61   342 3.88 3.84 2.33
## 14  0.31     Ideal     J     SI2  62.2    54   344 4.35 4.37 2.71
## 15  0.20   Premium     E     SI2  60.2    62   345 3.79 3.75 2.27
## 16  0.32   Premium     E      I1  60.9    58   345 4.38 4.42 2.68

Histogram of carat

library(ggplot2)
ggplot(data=diamonds) + geom_histogram(aes(x=carat))
## stat_bin: binwidth defaulted to range/30. Use 'binwidth = x' to adjust this.

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Density plot of carat

ggplot(data=diamonds) + 
geom_density(aes(x=carat),fill="gray50")

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Scatter plots (carat vs. price)

ggplot(diamonds, aes(x=carat,y=price)) + geom_point()

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Carat with colors

g = ggplot(diamonds, aes(x=carat, y=price)) # saving first layer as variable
g + geom_point(aes(color=color)) # rendering first layer and adding another layer

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Carat with colors (more details)

g + geom_point(aes(color=color)) + facet_wrap(~color)

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Let's consider cut and clarity

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Your trun!

What is your knowledge of diamond's price after exploring this data?

Interactive visualization in R - rCharts

Tell your story - R Markdown

  • R Markdown is an authoring format that enables easy creation of dynamic documents, presentations, and reports from R.
  • It combines the core syntax of markdown (an easy-to-write plain text format) with embedded R code chunks that are run so their output can be included in the final document.
  • Many available output formats including HTML, PDF, and MS Word
  • Installation
    Use RStudio: already installed
    Outside of RStudio: install.packages("rmarkdown"). A recent version of pandoc (>= 1.12.3) is also required. See https://github.com/rstudio/rmarkdown/blob/master/PANDOC.MD to install it.

Check out Markdown first

Markdown is a markup language with plain text formatting syntax designed so that it can be converted to HTML and many other formats using a tool by the same name.

One minute you get the point, and always check the cheat sheets
https://github.com/adam-p/markdown-here/wiki/Markdown-Cheatsheet#lists

Then, R Markdown sample code

Download the template:
https://github.com/datasciencedojo/datasets/blob/master/rmarkdownd_template.Rmd

R Markdown

  • YAML header
  • Edit Markdown, and R chunks
  • Run!
    RStudio: knitr button
    Command line: render("file.Rmd")

Cheat sheet of rmarkdown:
http://www.rstudio.com/wp-content/uploads/2015/02/rmarkdown-cheatsheet.pdf

Present your story of Titanic!

Use

  • Titanic data
  • Plotting functions in R
  • R Markdown template
  • The heart of data explorer

to write your story of Titanic...

Hope this is inspiring :)

Titanic