1 Graphics HRP223 – 2013 November 18, 2013 Copyright © 1999-2013 Leland Stanford Junior...

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1 Graphics HRP223 – 2013 November 18, 2013 Copyright © 1999-2013 Leland Stanford Junior University. All rights reserved. Warning: This presentation is protected by copyright law and international treaties. Unauthorized reproduction of this presentation, or any portion of it, may result in severe civil and criminal penalties and will be prosecuted to maximum extent possible under the law.

Transcript of 1 Graphics HRP223 – 2013 November 18, 2013 Copyright © 1999-2013 Leland Stanford Junior...

1

Graphics

HRP223 – 2013November 18, 2013

Copyright © 1999-2013 Leland Stanford Junior University. All rights reserved.Warning: This presentation is protected by copyright law and international treaties. Unauthorized reproduction of this presentation, or any portion of it, may result in severe civil and criminal penalties and will be prosecuted to maximum extent possible under the law.

2

Robbins

• Creating More Effective Graphics by Naomi Robbins is a wonderful book showing the right and wrong ways to visualize scientific data. Read it when you have an afternoon off. It is an ideal read on a transcontinental flight.

3

How I do graphics

• Exploratory stuff– Use the quick and dirty graphics built into EG

• Production quality graphics– Write SAS or R code to make better looking

graphics– Edit in Adobe Illustrator

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Visualization Tools

• This is a excellent book that covers how to visualize stuff using many tools (including R). It has a great introduction to Adobe Illustrator.

5

Why Do Data Visualization?

• Well designed pictures will show you the details and the whole pattern in your data.

• Numeric descriptions can easily hide important information.

• Some patterns are hard to detect in tables.– Whenever data is reported over time or locations,

you need art.

YOU CAN LEARN A LOT BY JUST LOOKING.-Yogi Berra

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Fisher’s Plot Data Reported in Cleveland

Based on code written by Robert Allison at SAS Institute

Year 1 Year 2

7

0

5

10

15

0 5 10 15 200

5

10

15

0 5 10 15 20

0

5

10

15

0 5 10 15 200

5

10

15

0 5 10 15 20

Scatter Plot for Correlations

All have r2 = .67Anscombe 1973, Graphs in Statistical Analysis

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Good Statistical Graphics

• Show central tendency and variability• Do not require the reader to think…

– Include no extra information– Avoids unnecessary ink– Highlights they key points– Directly plots the conclusion/inference– Uses mnemonic colors– Labels categories

• Includes the sample size

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Bad Things

• First, I want to talk about bad graphics that I frequently see.– 3d– Extra Ink– Pie– Donuts– Stacked graphics

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General

• 3D graphics

– Don’t, Don’t, Don’tWhile the SAS implementation of 3D graphics is relatively good, don’t use 3D effects, unless you are measuring something in 3D. Even then, don’t.

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Tufte is a God to many.

• The empiricist in me is very nervous about the amount of pontificating in his books…– I want to have evidence-based advice.

• His best advice is to put no extra ink on the page.– Think about the ink-to-information ratio.– Remove all chart junk.

Note: the irony of the chart junk on this slide….

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Ink-to-Information Ratio

• How much ink for seven numbers?

Based on Soukup & Davidson, 2002 Visual Data Mining

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Pie is bad.

• Work by Cleveland (and experimental psychologists) suggests that:– people are bad at judging the relative magnitude of angles – if you twist the rotation of the pie you can cause people to

systematically misjudge the size of the angles– a 3rd dimension makes judgment worse

• If you get a glossy handout with a 3D pie, assume someone is lying to you.

• Don’t use them.

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Don’t Explode!

• This exploded 3D pie (brought to you by Excel) is nearly useless for judging amounts.

Total

tweakedtwistedwrecked

15

Forbidden Donut….

• Donut plots have the same problems as pies (if not worse) ….

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Cleveland

• If you want to know how to do scientific visualization, you must read William Cleveland’s work.– He attempted to quantify what makes a good graphic good.

• His early work on graphics is one of the reasons why R/S-plus is taking over the statistical world.

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Stacking is Bad

• Cleveland also quantified the fact that people are bad at judging the relative height of stacked data.

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Wow, a cinnamon roll plot!

• Good luck making rapid judgments using this stacked 3D pie.

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Bar Chart ~ Default

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Custom AxisI prefer to have

ticks beyond the largest value

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yaxis stuff ;The popular options are not listed first…

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Ticks on Both Y AxesTicks on both axes

may help guestimate the counts

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Things in < > are optional arguments

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Data in Jail The lines are on top

so they look prominent. Can I

lighten them?

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OR

Things in < > are optional arguments

A variable name A number Optionally add other numbers

Optionally add a / and options for the reference

line(s)

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Line Attributes

• I wanted to adjust the line attributes so I will use / lineattrs=()

OR Give a set of line options in ()

A style element with options

I wish I knew how that works…

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• Details in parentheses:

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Gray is here…

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Reference LinesFirst draw reference linesthen draw bars

on top.

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Reducing Ink

• In Tufte’s world less ink is good. I could remove the bar color but that is removing necessary ink for this style of plot. I can remove the black edges to the bars.

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Second axis labels are gone

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Put White Lines Over the Bars

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Ut oh…

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Awful Design…. I specify a title and it does not show up

in the plot.

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I want to draw

attention to this.

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Specify you want a different color group

for each bar.

Specify the bar and outline colors.

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Notice the blue.

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Cleveland made Dot Plots Replace Bar Charts

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Adding an Offset to the y-axis

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Adding Value Labels

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Show Frequency Counts

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Label Attributes

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You can easily specify that each value is its own

color group.

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What is a good graphic?

• Don’t make your audience think unnecessarily!– The point of the graphic should stand out instantly.– Plot the quantity (inference) that you want people to

notice.• Show the central tendency and the variability.• Minimize the amount of ink on the page.• Be sure colorblind people can understand it.

– Use a black and white photocopier and make sure you can distinguish all groups.

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What is wrong with this?

Female Male125

130

135

140

145

150

155

160

165

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Weight in Framingham Dataset

What is the point that the reader should learn from this?

How is the variability represented?What are the error bars?Can you interpret a 1 SD error bars?

How many people are included?Ink to information … How many numbers are depicted?

Never contrast black on blue.

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Another Way

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How did I do that?

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Don’t put a legend on the plot, add a pop-up

description tooltip for pages on the web and save the

graphics template.

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The Graphic Template

• Premade complex plot designs are stored in a graphic template. You can also save the graphic template for any plot you make.

• Add tmplout= to the gplot statement.

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The TemplateI gave it a name

Use the new template on the

dataset.

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With the title in the graphic

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Another version of the same data

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Moderately Awful Code

• Bubble sizes are set by providing a radius… I force the area by setting the smallest and largest bubble size in centimeters.

I want to use this part of the plot for the legend so I

name it.

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9.3 How do I set the blue and pink?

• For grouped data you can specify the details for each plotted element in a style template:

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What is wrong with this?

What is the point of this graphic?

How are the two sexes represented?

What data is this?

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Easy But Awful Boxplots

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What is wrong with this?

Lovely white space

What is the point?

How are the sexes represented?

How many people?

Where is the mean?

What data is this?

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What is the point of this graphic?

How are the two sexes represented?

A Good Boxplot

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What is the point of this graphic?

A Very Good Boxplot

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Code for a Very Good Boxplot 9.4

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Built in Graphics

• Many Enterprise Guide analyses have built in diagnostic graphics.

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When you test for the difference in the mean SAS gives you a great plot.

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Avoid Thinking

• Put labels on the graphic directly instead of using a key.

• If you want people to compare the difference between two lines, plot the difference, not the two lines.

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Bivariate Comparisons with Lines

• People are extremely bad at judging the distance between two curves. Never ask people to judge up and down (vertical) distances between curves.

Based on: Robbins Creating More Effective Graphs, 2005

The distance between the two curves is the same at all points.

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Plot Types

• Categorical variables– Descriptive

• Bar charts• Dot plots

– Inferential• Continuous variables

– Histogram– Box plot– Violin plots– Quantile and QQ plots

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Frequency Plots

• EG for frequency plots• Custom code

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I Typically Use HTML

This says the images should show tooltips with extra statistical details when you hover the mouse over parts of the graphic. (I can’t image these.)

This is the appearance template. For optimal results use:Analysis: colorDefault : overdistinguishes symbols for color or B&WJournal or journal2, etc: black and whiteStatistical or statistical2, etc: color

Include image_dpi = 300 to set the resolution to be higher than the default 100 dots per inch. Try 300 for final images pasting into MS Office.

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ods graphics on;

• This turns on the ODS statistical graphics.• Behind the scenes this combines your data

with a pre-specified description of what to plot and the aesthetics of the appearance.

Your data

Graphtemplate

Styletemplate

What Where?

ColorsFonts

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Useful ods graphics options

• ods graphics on /

• ods graphics / reset;

• ods graphics off;

Width = 8inHeight = 11inImagefmt = jpgimagename = thingyimagefmt = staticmap ;

Make a series of graphics

called thingy1,

thingy2, etc.

If you set only width or height, it will use a 4:3 aspect ratio.

Reset the graphic counter back to 1

Use pop-up tooltips with

details.

If you want to disable ods graphics

for a procedure

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ODS Graphics Editor with EG

• If you want to do extensive tweaking to a graphic, you can use the WYSIWYG ODS Graphics editor. Unfortunately it only works with ODS graphics procedures and you need to rerun the code in SAS to invoke it.

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Move code from EG to SAS

1. Use the query builder to put your data in a permanent SAS library (not the work library).

2. Right click on the graphic node which is run on data in a permanent library and choose Open… Open Last Submitted Code.

3. Copy the code beginning with the SQL that makes the data.

4. Start SAS and paste the code into the program editor.

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Move all your code to SAS• Because the ODS graphics editor is not in EG

(yet), you can export the entire set of code for the project and then rerun it in SAS.

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ODS Graphics Editor with EG(2)

• After exporting all your EG project, open the code in SAS and add these lines at the top of the program:

ods rtf file = "c:\blah\somefile.rtf";ods listing sge = on;

• Then open the graphic of interest.

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WYSIWYG Editing

• Right click and/or double click to set properties for objects in the plot.

The tool is optimized for some of the ODS style templates but you can use custom colors.

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• Right click on things to set properties. – Colors, text details, fonts– Point and click annotation– Symbols, arrows, text, circles

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WYSIWYG Editing

• While the Statistical graphics editor is a much needed improvement, it is incomplete. You can only use a few, style templates (for setting default colors and such) and you can not use custom style templates. This means that you can not do critical tasks like manually set the color for different values in scatter plots.

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Bar Charts

• The ink-to-information ratio is lousy.• A one dimensional quantity is being

“expanded” into two dimensions. – Doubling of the amount corresponds to how much

of an increase in area?

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SAS Bar Charts

• SAS makes the reader do extra work by rotating the axis labels in ActiveX images.

• They pointlessly include variable labels by default.

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How to do it?

Notice you can Edit the data and apply filters.

You can right click on variables and apply user-defined formats off the

Properties dialog.

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First create the format.

In the Data windowpane of the Bar Chart GUI, right click on the variable and change the format to the User Defined format you had created.

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The GUI is Solid

• My only complaints are that the rotate grouping values text does not work (position in this example) and the summary statistics do not show up when you request ActiveX images.

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.PNG format

ActiveX image format

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Saving the Graphic for Publication

• The easiest way to get publication quality graphics is to set the output type to be RTF.

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Default Output and Graphics

• The default graphic format in EG is ActiveX. These images can be edited (even on the web) but they only display with Internet Explorer. I have set my graphics to display as ActiveX images. Tweak this with Tools> Options… > Graph.

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Types of Images

• The default formats of the images are determined by the ODS destinations you are using:– LISTING: pgn visible in the Windows Image Fax Viewer– HTML: png, gif, jpg contained in web pages and visible in

Internet Explorer, Firefox or Opera– LATEX: PostScrpt, epsi, gif, jpeg, pgn are visible in GhostView– PCL or PS: contained in Postscript file are visible in GhostView– PDF: contained in pdf, which is visible with Adobe Reader– RTF: visible in MS Word

• RTF graphics are done at 300 dpi by default

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You can browse the ODS appearance templates from the Style Manager on the Tools menu.

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ODS SGraphics

• Compared to the competition, for the last 10 years SAS graphics have been between poor and pathetic.– Graphics procedures rendered with okay quality,

at best .– No “what you see is what you get” editing.– Many plots were nearly impossible to render.– Custom graphics required extensive programming.

• SAS 9.x has attempted to solve this problem.

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Old vs. New Procedures

• The old (commonly used) graphics procedures were gchart, gplot.

• Now most analysis procedures have built in high quality graphics that can be invoked with an ODS graphics on statement.– Early on in the class I told you to tweak the EG

options to include “ODS graphics on” with every run.

• There are also new “easy to use” statistical graphics (sg) procedures.

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New Graphics Statistical Graphics Procs

• proc sgPlot– general plotting procedure that replaces gplot

• proc sgScatter– lots of tools for scatterplots and scatter matrices

• proc sgPanel– quick and easy trellis/lattice/matrix/panel of plots

• Proc sgRender– used with proc template to make totally custom plots– It replaces proc greplay

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Plot Types

• Categorical variables– Bar charts– Dot plots

• Continuous variables– Histogram– Box plot– Violin plots– Quantile and QQ plots

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Dot charts

Categorical variables

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Grouped Categorical Variables

• To graph categorical data in SAS you need to get Michael Friendly’s Visualizing Categorical Data. Unfortunately, his macros are copyrighted with the book… So I will show you the R versions.– Fourfold plots– Mosaic plots– Association plots

Grouped categorical variables

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If you want to use R

• Download R for Mac or PC cran.cnr.berkeley.edu/bin/macosx/ cran.cnr.berkeley.edu/bin/windows/base

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How to learn R

• I usually teach R classes in the summer.– www.stanford.edu/~balise/ has links to my slide

decks for R classes.

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Plots for inference

• Categorical plots– Confidence limits on odds ratios– Four-fold plots– Expectancy plots– Mosaic plots

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Fourfold Plots

• They draw 4 slices of pie with the area corresponding to the number of people in each cell of a 2x2 table and they have confidence bands such that if the confidence bounds overlap on adjacent pie pieces, they are not statistically significantly different.

Grouped categorical variables

45% male vs. 30% female admission

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More males were admitted than females.

There is clear evidence of sexist policies in admissions!

Row: Male

Co

l: A

dm

itte

d

Row: Female

Co

l: R

eje

cte

d

1198

557

1493

1278

Grouped categorical variables

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Department A admitted more females than males and every other department had no bias!

The joy of Simpsons paradox.

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: A

512

89

313

19

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: B

353

17

207

8

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: C

120

202

205

391

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: D

138

131

279

244

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: E

53

94

138

299

Sex: Male

Ad

mit

?:

Ye

s

Sex: Female

Ad

mit

?:

No

Department: F

22

24

351

317

Grouped categorical variables

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Mosaic Plots

• So you have an contingency table and you want to know if there is as an association. You do a chi-square test and it says there are associations between the rows and columns. What next?

Grouped categorical variables

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Some basic voodoo in R shows which combinations are over (in blue) or under represented (in red).

Grouped categorical variables

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I prefer the simpler association plots.

Green Hazel Blue Brown

Blo

nd

Re

dB

row

nB

lack

Relation between hair and eye color

Grouped categorical variables

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Continuous Outcomes

• The Distribution Analysis menu option can do basic plots.

Continuous variables

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The resolution of the histogram is okay but the others are unacceptable.

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Use sgplot for high resolution plots.

Continuous variables

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As you add more requests to the plot, it resizes and shifts things to make room. It draws them in the order you request them. It reads the requests from the first listed to the bottom. Change the order if you want to have an item appear layered on top of, or behind, another thing.

Some colors are not set yet in the enhanced editor. Use the menu Tools>Options>Enhanced Editor… then click User Defined Keywords to add the coloring.

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I want the title!

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How is that made?proc format library = work;

value $smoked"Non-smoker" = "None "missing = "Missing"other = "Not none"

;run;

data fram;set sashelp.heart;smokin = put(smoking_Status, $smoked.);

run;

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How is that made?

title "5209 Cholesterol Measures from Framingham Heart Study";proc sgplot data = fram tmplout="c:\blah\plate.sas";

histogram cholesterol;density cholesterol / type = kernel;density cholesterol / type = normal;keylegend /

location=inside position=topright across=1;run;

Make a new graphics template

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proc template;define statgraph sgplotFram;begingraph /;EntryTitle "5209 Cholesterol Measures from Framingham Heart Study" /;layout overlay; Histogram 'Cholesterol'n / primary=true binaxis=false LegendLabel="Cholesterol"; DensityPlot 'Cholesterol'n / Lineattrs=GraphFit kernel() LegendLabel="Kernel" NAME="DENSITY"; DensityPlot 'Cholesterol'n / Lineattrs=GraphFit2 normal() LegendLabel="Normal" NAME="DENSITY1"; DiscreteLegend "DENSITY" "DENSITY1" / Location=Inside across=1 halign=right valign=top;endlayout;endgraph;end;run;

proc sgrender data = work.fram template = template=sgplotFram;run;

This was saved in plate.sas.

Render a graphic with the template and dataset specified.

Note I changed the name of this template.

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How to set the color for a histogram

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proc sgplot data = fram;histogram weight / fillattrs = (color = coral);

run;

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You can also tweak the style template

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Tweaking the Style Template

proc template;define style myStyle;

parent = styles.Statistical;style GraphDataDefault / color=coral;

end;run;

ods html style = myStyle;proc sgplot data = fram;

histogram weight ;run;ods html close;

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vbar Version

proc sgplot data = fram;vbar weight / group = sex;

run;

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proc sgplot data = fram;vbar weight / group = sex;xaxis fitpolicy = thin ;

run;

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proc template;define style myStyle;parent = styles.Statistical;

style graphdata1 from graphdata1 / contrastColor=pink color = pink;

style graphdata2 from graphdata1 / contrastColor=blue color = blue;

end;run;

ods html style = myStyle;proc sgplot data = fram;

vbar weight / group = sex;xaxis fitpolicy = thin ;

run;ods html close;

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Customizing graphics

• You can tweak the graphics that ship with SAS by modifying their graph template or you can create truly custom graphics by making your own statistical graph template.

Your data

Graphtemplate

Styletemplate

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If you do not want to explain what Kernel density estimation is…

remove the lines.

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Finding the template

• Add before the procedure that draws the graphic add ods trace on; and include ods trace off; afterwards. This prints the names of all the templates used by the procedure in the log. product.procedure.Graphis.TemplateName

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Looking at a Template

• You can ask proc template to display the template with the source statement:

proc template;source stat.ttest.graphics.summary2;

run;

• Remember to type this before you start editing:

ods path(prepend) work.template (update);

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Don’t Panic

This is a complete template except for the

proc template statement here and a run statement at the

bottom.

Copy this into an editor window and add proc

template.

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After adding proc template and commenting out the Kernel statements rerun the code.

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Oops. Unknown key words…

• You can fix the color coding on the template code easily.

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Fixed (permanently)

All your subsequent plots will have no density line.

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Continuous variables

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Violin

• A violin plot mirrors the shape of the histogram (density). They can be done in R.

05

01

00

15

0

Continuous variables

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Grouped Continuous Variables

• You can use the Distribution Analysis to get basic grouped plots.

• For better looking plots you need to write sgplot and/or sgpanel code.

Grouped continuous variables

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Request distinct graphics by subgroups.

Grouped continuous variables

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Grouped continuous variables

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Actually this took a bit of voodoo.

Grouped continuous variables

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1st

2nd

Grouped continuous variables

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Double click here.

Put details on the histogram tweaks here.

I use/tweak nrow ncol and endpoints often.endpoints = 2 to 10 by 0.5midpoints = 5.6 5.8 6.0 6.2 6.4

Grouped continuous variables

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Grouped continuous variables

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Grouped continuous variables

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I want to add in a reference line showing what is normal and put the categories in order.

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Side by Side Violin Plots

A B C

50

10

01

50

Grouped continuous variables

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Paired Continuous Variables

• People typically show paired data with scatterplots.

• EG generate them:

Grouped continuous variables

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Scatter PlotGrouped continuous variables

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Jittered Plot

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Jitter vs. Sunflowers

In R you can also do sunflower plots.

Grouped continuous variables

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Ordinary Least Squares Regression

• People typically plot a regression line to show a relationship between two continuous variables.

Grouped continuous variables

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Regression line

• You can easily add a regression line to the scatter plot.

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proc sgplot data = fram;scatter x = height y = weight;

run;

proc sgplot data = fram;reg x = height y =

weight;run;

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ods listing sge = on style = statistical;

proc sgplot data = fram;reg x = height y = weight /

markerattrs = (color = green) lineattrs = graphdata1 (color = lime);

run;

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ods listing style = statistical;

proc sgplot data = fram;reg x = height y = weight / group = sex ;

run;

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proc template;define style sexE;parent = styles.Statistical;style graphdata1 /

contrastColor=pink markersymbol = "star";

style graphdata2 / contrastColor=blue markersymbol = "plus";

end;run;

ods html body="C:\blah\stuff.html" gpath="c:\blah" style = sexE;

proc sgplot data = fram;scatter x = height y = weight / group = sex ;reg x = height y = weight / group = sex ;

run;ods html close;

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Bisquare• Figure out what is an odd value and then put a weight on it to

devalue it. There are many robust regression algorithms around. R and S-Plus software have them well implemented.

0 1 2 3 4 5 6 7 8

V1

0

5

10

15

20

V3

0 1 2 3 4 5 6 7 8

V1

0

5

10

15

20

V3

Grouped continuous variables

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Loess and Splines

• Loess is a technique essentially creates a rolling window and gets a weighted average across the values visible inside the window.

• Splines are curved lines that allow different amounts of stiffness to the curves.

Grouped continuous variables

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Smooth = 25Smooth = 50

Smooth = 99

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Proc phreg has a lot of new features but nothing major in the graphics. With phreg, if you specify ods graphics on you do not automatically get any plots. Here I request survival and cumulative hazard plots including the global confidence limits option (cl).

Once again the option names are not consistent with the table names.

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Proc lifetest can show the number at risk but the implementation is weak. It labels the groups with numbers even if the strata are character strings. You have to manually edit them and this affords ample opportunity for mistakes.I don’t see a way to change the censoring symbol in the legend.

This shows the number of people at risk after 20, 40 etc days.

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Too Many Graphics

• If the ods graphics on statement gives you too many graphics, you can specify which graphics you want by including code designed for the procedure. Typically it looks like this: plot(only) = (table names). This design is poorly implemented because you need to know where to put the plot statement and what the table names are. Does it go on the proc line (like phreg), the tables line (like proc freq), or some other line? Also the table names specified with a plot statement do not always match the ODS table names.

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• Usually you can use an ODS exclude statement or an ODS select statement to pick the correct things to print. Using the plots(only) = syntax is more efficient.

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Splitting a Grid

• Some procedures produce a grid of plots. You can get access to the individual plots by specifying plots(unpack). Then you can use plots(only)=tableName to get just the right parts.

• ODS select or exclude statements will not work.

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plots(GlobalOptionsGoHere). The global options apply to all graphics in this procedure.

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Beyond the Basic Univariate plots

• There are 4 SG procedures that allow you to build up complex univariate plots and do multivariate (trellis/lattice) plots.

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Statistical Graphics Procs

• proc sgPlot– general plotting procedure that replaces gplot

• Proc sgRender– used with proc template to make totally custom plots– It replaces proc greplay

• proc sgScatter– lots of tools for scatterplots and scatter matrices

• proc sgPanel– quick and easy trellis/lattice/matrix/panel of plots

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Grids

• You can produce lattices full of graphics with proc gpanel.

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Spaghetti Plots

Data from Singer and Willett: www.ats.ucla.edu/stat/examples/alda.htm

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SGPlot vs Template

• You can replicate everything done with proc sgplot using the template language but don’t reinvent the wheel if you don’t need to.

• You will want to use proc template to build custom graphics that use many panels.

• Proc sgplot uses statements that start like reg but template uses names like regressionplot. – Similar but not identical names… boo.

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layout gridded = ticks do not have to alignlayout lattice = ticks must align

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