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Computing for Research I Spring 2014 Primary Instructor: Elizabeth Garrett-Mayer Introduction to R March 17

Computing for Research I Spring 2014

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Computing for Research I Spring 2014. Introduction to R March 17. Primary Instructor: Elizabeth Garrett-Mayer. Check out online resources. http://people.musc.edu/~ elg26/teaching/methods2.2010/R-intro.pdf http://www.ats.ucla.edu/stat/r/ http://www.statmethods.net/about/learningcurve.html - PowerPoint PPT Presentation

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Page 1: Computing for Research I Spring 2014

Computing for Research ISpring 2014

Primary Instructor: Elizabeth Garrett-Mayer

Introduction to RMarch 17

Page 3: Computing for Research I Spring 2014

R. Kabacoff on learning R after SPSS and SAS (http://www.statmethods.net/about/learningcurve.html)

Why R has A Steep Learning Curve :

A long answer to a simple question... • I have been a hardcore SAS and SPSS programmer for more than 25 years, a Systat programmer for 15 years and a Stata

programmer for 2 years. But when I started learning R recently, I found it frustratingly difficult. Why? I think that there are two reasons why R can be challenging to learn quickly. • First, while there are many introductory tutorials (covering data types, basic commands, the interface), none alone are

comprehensive. In part, this is because much of the advanced functionality of R comes from hundreds of user contributed packages. Hunting for what you want can be time consuming, and it can be hard to get a clear overview of what procedures are available.

• The second reason is more ephemeral. As users of statistical packages, we tend to run one proscribed procedure for each type of analysis. Think of PROC GLM in SAS. We can carefully set up the run with all the parameters and options that we need. When we run the procedure, the resulting output may be a hundred pages long. We then sift through this output pulling out what we need and discarding the rest.

The paradigm in R is different.• Rather than setting up a complete analysis at once, the process is highly interactive. You run a command (say fit a

model), take the results and process it through another command (say a set of diagnostic plots), take those results and process it through another command (say cross-validation), etc. The cycle may include transforming the data, and looping back through the whole process again. You stop when you feel that you have fully analyzed the data. It may sound trite, but this reminds me of the paradigm shift from top-down procedural programming to object oriented programming we saw a few years ago. It is not an easy mental shift for many of us to make.

• In that in the end, however, I believe that you will feel much more intimately in touch with your data and in control of your work. And it's fun!

Page 4: Computing for Research I Spring 2014

Installing R• http://cran.r-project.org/• Choose appropriate interface

– windows– Mac– Linux

• Follow install instructions

• Rstudio: https://www.rstudio.com/

Page 5: Computing for Research I Spring 2014

R interface

• batching file: File -> open script

• run commands: Ctrl-R

• Save session: sink([filename])….sink()

• Quit session: q()

Page 6: Computing for Research I Spring 2014

General Syntax

• result <- function(object(s), options…)

• function(object(s), options…)

• Object-oriented programming

• Note that ‘result’ is an object

Page 7: Computing for Research I Spring 2014

First things first:

• help([function]) or ?function

• help.search(“linear model”) or ??”linear model”

• help.start()

Page 8: Computing for Research I Spring 2014

Choosing your default• setwd(“[pathname for directory]”)• getwd()

• need “\\” instead of “\” when giving paths• Alternatively, you can use a ‘/’ to give path names.

• .Rdata

• .Rhistory

Page 9: Computing for Research I Spring 2014

Start with data

• read.table

• read.csv

• scan

• dget

Page 10: Computing for Research I Spring 2014

Extracting variables from data

• Use $: data$AGE

• note it is case-sensitive!

• attach([data]) and detach([data])

Page 11: Computing for Research I Spring 2014

Descriptive statistics

• summary

• mean, median

• var

• quantile

• range, max, min

Page 12: Computing for Research I Spring 2014

Missing values

• sometimes cause ‘error’ message

• na.rm=T

• na.option=na.omit

Page 13: Computing for Research I Spring 2014

Data Objects• data.frame, as.data.frame, is.data.frame

– names([data])– row.names([data])

• matrix, as.matrix, is.matrix– dimnames([data])

• factor, as.factor, is.factor– levels([factor])

• arrays• lists• functions• vectors• scalars

Page 14: Computing for Research I Spring 2014

Creating and manipulating• combine: c

• cbind: combine as columns• rbind: combine as rows

• list: make a list

• rep(x,n): repeat x n times

• seq(a,b,i): create a sequence between a and b in increments of i

• seq(a,b, length=k): create a sequence between a and b with length k with equally spaced increments

Page 15: Computing for Research I Spring 2014

ifelse• ifelse(condition, true, false)

– agelt50 <- ifelse(data$AGE<50,1,0)– for equality must use “==“– “or” is indicated by `|’

e.g., young.or.old <- ifelse(data$AGE<30 | data$AGE>65,1,0)

• cut(x, breaks)

– agegrp <- cut(data$AGE, breaks=c(0,50,60,130))– agegrp <- cut(data$AGE, breaks=c(0,50,60,130),

labels=c(0,1,2))– agegrp <- cut(data$AGE, breaks=c(0,50,60,130),

labels=F)

Page 16: Computing for Research I Spring 2014

Looking at objects

• dim

• length

• sort

• attributes

Page 17: Computing for Research I Spring 2014

Subsetting

• Use [ ]

• Vectors– data$AGE[data$REGION==1]– data$AGE[data$LOS<10]

• Matrices & Dataframes– data[data$AGE<50, ]– data[ , 2:5]– data[data$AGE<50, 2:5]

Page 18: Computing for Research I Spring 2014

Some math

• abs(x)

• sqrt(x)

• x^k

• log(x) (natural log, by default)

• choose(n,k)

Page 19: Computing for Research I Spring 2014

Matrix Manipulation

• Matrix multiplication: A%*%B

• transpose: t(X)

• diag(X)

Page 20: Computing for Research I Spring 2014

Table

• table(x,y)

• tabulate(x)

Page 21: Computing for Research I Spring 2014

Statistical Tests and CI’s

• t.test

• fisher.test and binom.exact

• wilcox.test

Page 22: Computing for Research I Spring 2014

Plots• hist

• boxplot

• plot– pch, type, lwd– xlab, ylab– xlim, ylim– xaxt, yaxt

• axis

Page 23: Computing for Research I Spring 2014

Plot Layout

• par(mfrow=c(2,1))

• par(mfrow=c(1,1))

• par(mfcol=c(2,2))

• help(par)

Page 24: Computing for Research I Spring 2014

Probability Distributions

• Normal:– rnorm(N,m,s): generate random normal data– dnorm(x,m,s): density at x for normal with mean m, std dev s– qnorm(p,m,s): quantile associated with cumulative

probability of p for normal with mean m, std dev s– pnorm(q,m,s): cumulative probability at quantile q for

normal with mean m, std dev s• Binomial

– rbinom– etc.

Page 25: Computing for Research I Spring 2014

Libraries

• Additional packages that can be loaded (next lecture)

• Example: epitools

• library

• library(help=[libname])

Page 26: Computing for Research I Spring 2014

Keeping things tidy

• ls() and objects()

• rm()

• rm(list=ls())