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What are the functions that you wrote, don't quite deserve a package, but you wish to share?

I will throw in some of mine:

destring <- function(x) {
    ## convert factor to strings
    if (is.character(x)) {
    } else if (is.factor(x)) {
    } else if (is.numeric(x)) {
    } else {
        stop("could not convert to numeric")

pad0 <- function(x,mx=NULL,fill=0) {
  ## pad numeric vars to strings of specified size
  lx <- nchar(as.character(x))
  mx.calc <- max(lx,na.rm=TRUE)
  if (!is.null(mx)) {
    if (mx<mx.calc) {
      stop("number of maxchar is too small")
  } else {
    mx <- mx.calc
  px <- mx-lx
  paste(sapply(px,function(x) paste(rep(fill,x),collapse="")),x,sep="")

.eval <- function(evaltext,envir=sys.frame()) {
  ## evaluate a string as R code
  eval(parse(text=evaltext), envir=envir)

## trim white space/tabs
## this is marek's version
trim<-function(s) gsub("^[[:space:]]+|[[:space:]]+$","",s)
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closed as not constructive by John Saunders, Jeremy Banks, Jeff Mercado, Andrew Barber, user7116 Nov 18 '11 at 4:48

As it currently stands, this question is not a good fit for our Q&A format. We expect answers to be supported by facts, references, or expertise, but this question will likely solicit debate, arguments, polling, or extended discussion. If you feel that this question can be improved and possibly reopened, visit the help center for guidance.If this question can be reworded to fit the rules in the help center, please edit the question.

Eduardo, this is a topic more fit for a blog rather than SO. – Paul Sasik Aug 14 '10 at 22:57
Paul - I agree. But I thought a community wiki here would help me find some gems. Base R is "missing" a few of this helper functions. – Eduardo Leoni Aug 14 '10 at 23:00
I think this is a great topic! – nico Aug 15 '10 at 7:14
A good place for such code is at [wiki.r-project.org] – Aniko Aug 15 '10 at 20:15
For your trim function I would do trim<-function(s) gsub("^[[:space:]]+|[[:space:]]+$","",s) which removes other blank characters (see ?regex) and combinations like space+tab+normal_text. – Marek Aug 17 '10 at 8:51
up vote 26 down vote accepted

Here's a little function to plot overlapping histograms with pseudo-transparency:

Overlapping Histograms

plotOverlappingHist <- function(a, b, colors=c("white","gray20","gray50"),
                            breaks=NULL, xlim=NULL, ylim=NULL){


  } else {

    dist = ahist$breaks[2]-ahist$breaks[1]
    breaks = seq(min(ahist$breaks,bhist$breaks),max(ahist$breaks,bhist$breaks),dist)


    xlim = c(min(ahist$breaks,bhist$breaks),max(ahist$breaks,bhist$breaks))

    ylim = c(0,max(ahist$counts,bhist$counts))

  overlap = ahist
  for(i in 1:length(overlap$counts)){
    if(ahist$counts[i] > 0 & bhist$counts[i] > 0){
      overlap$counts[i] = min(ahist$counts[i],bhist$counts[i])
    } else {
      overlap$counts[i] = 0

  plot(ahist, xlim=xlim, ylim=ylim, col=colors[1])
  plot(bhist, xlim=xlim, ylim=ylim, col=colors[2], add=T)
  plot(overlap, xlim=xlim, ylim=ylim, col=colors[3], add=T)

An example of how to run it:

a = rnorm(10000,5)
b = rnorm(10000,3)

Update: FWIW, there's a potentially simpler way to do this with transparency that I've since learned:

a=rnorm(1000, 3, 1)
b=rnorm(1000, 6, 1)
hist(a, xlim=c(0,10), col="red")
hist(b, add=T, col=rgb(0, 1, 0, 0.5)
share|improve this answer
that's very neat chris. i will accept this answer, as it also got the highest number of votes. – Eduardo Leoni Aug 30 '10 at 4:18

The output of the fft (Fast Fourier Transform) function in R can be a little bit tedious to process. I wrote this plotFFT function in order to do a frequency vs power plot of the FFT. The getFFTFreqs function (used internally by plotFFT) returns the frequency associated to each FFT value.

This was mostly based on the very interesting discussion at http://tolstoy.newcastle.edu.au/R/help/05/08/11236.html

# Gets the frequencies returned by the FFT function
getFFTFreqs <- function(Nyq.Freq, data)
    if ((length(data) %% 2) == 1) # Odd number of samples
        FFTFreqs <- c(seq(0, Nyq.Freq, length.out=(length(data)+1)/2), 
               seq(-Nyq.Freq, 0, length.out=(length(data)-1)/2))
    else # Even number
        FFTFreqs <- c(seq(0, Nyq.Freq, length.out=length(data)/2), 
               seq(-Nyq.Freq, 0, length.out=length(data)/2))

    return (FFTFreqs)

# FFT plot
# Params:
# x,y -> the data for which we want to plot the FFT 
# samplingFreq -> the sampling frequency
# shadeNyq -> if true the region in [0;Nyquist frequency] will be shaded
# showPeriod -> if true the period will be shown on the top
# Returns a list with:
# freq -> the frequencies
# FFT -> the FFT values
# modFFT -> the modulus of the FFT
plotFFT <- function(x, y, samplingFreq, shadeNyq=TRUE, showPeriod = TRUE)
    Nyq.Freq <- samplingFreq/2
    FFTFreqs <- getFFTFreqs(Nyq.Freq, y)

    FFT <- fft(y)
    modFFT <- Mod(FFT)
    FFTdata <- cbind(FFTFreqs, modFFT)
    plot(FFTdata[1:nrow(FFTdata)/2,], t="l", pch=20, lwd=2, cex=0.8, main="",
        xlab="Frequency (Hz)", ylab="Power")
    if (showPeriod == TRUE)
        # Period axis on top        
        a <- axis(3, lty=0, labels=FALSE)
        axis(3, cex.axis=0.6, labels=format(1/a, digits=2), at=a)
    if (shadeNyq == TRUE)
        # Gray out lower frequencies
        rect(0, 0, 2/max(x), max(FFTdata[,2])*2, col="gray", density=30)

    ret <- list("freq"=FFTFreqs, "FFT"=FFT, "modFFT"=modFFT)
    return (ret)

As an example you can try this

# A sum of 3 sine waves + noise
x <- seq(0, 8*pi, 0.01)
sine <- sin(2*pi*5*x) + 0.5 * sin(2*pi*12*x) + 0.1*sin(2*pi*20*x) + 1.5*runif(length(x))
plot(x, sine, "l")
res <- plotFFT(x, sine, 100)


linearChirp <- function(fr=0.01, k=0.01, len=100, samplingFreq=100)
    x <- seq(0, len, 1/samplingFreq)
    chirp <- sin(2*pi*(fr+k/2*x)*x) 

    ret <- list("x"=x, "y"=chirp)

chirp <- linearChirp(1, .02, 100, 500)
plot(chirp, t="l")
res <- plotFFT(chirp$x, chirp$y, 500, xlim=c(0, 4))

Which give

FFT plot of sine waves FFT plot of a linear chirp

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Very simple but i use it a lot:

setdiff2 <- function(x,y) {
    #returns a list of the elements of x that are not in y 
     #and the elements of y that are not in x (not the same thing...)

    Xdiff = setdiff(x,y)
    Ydiff = setdiff(y,x)
    list(X_not_in_Y=Xdiff, Y_not_in_X=Ydiff)
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# Create a circle with n number of "sides" (kudos to Barry Rowlingson, r-sig-geo).
circle <-  function(x = 0, y = 0, r = 100, n = 30){
    t <- seq(from = 0, to = 2 * pi, length = n + 1)[-1]
    t <- cbind(x = x + r * sin(t), y = y + r * cos(t))
    t <- rbind(t, t[1,])
# To run it, use
plot(circle(x = 0, y = 0, r = 50, n = 100), type = "l")
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I frequently want to use sum contrasts in regressions, and I usually want the terms to be meaningfully named. So I wrote this recontrast function.

recontrast<-function(data,type = "sum"){
    data.type <-class(data)
    if(data.type == "factor"&!is.ordered(data)&nlevels(data)>1&nlevels(data)<1000){
        if(type == "sum"){
        }else if(type == "treatment"){
    }else if(data.type == "data.frame"){
        for(i in 1:ncol(data)){
            if(is.factor(data[,i]) &     !is.ordered(data[,i])&nlevels(data[,i])>1&nlevels(data[,i])<1000){
                if(type == "sum"){
                    colnames(contrasts(data[,i]))<-levels(data[,i])[-    nlevels(data[,i])]
                }else if(type == "treatment"){
                    contrasts(data[,i])<-    contr.treatment(levels(data[,i]))

It take both entire dataframes and factors as arguments. If it's a data frame, it'll convert all contrasts of unordered factors with <1000 levels to either treatment or sum contrasts. With sum contrasts, it meaningfully names the columns, so you'll have meaningful labels in the regression output.

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It was annoying to me how data.frame with many columns is printed, I mean this split over columns. So I wrote my own version:

print.data.frame <- function(x, ...) {
    oWidth <- getOption("width")
    oMaxPrint <- getOption("max.print")
    on.exit(options(width=oWidth, max.print=oMaxPrint))
    options(width=10000, max.print=300)
    base::print.data.frame(x, ...)
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In the most useful R trick posting I saw a post by Keving from Nov 3 '09 bout dropping unused levels. The first function was provided there. and I took the best step in the second function to drop levels from a subset.

drop.levels <- function (dat) {if (is.factor(dat)) dat <- dat[, drop = TRUE] else dat[] <- lapply(dat, function(x) x[, drop = TRUE]); return(dat) ;};

subset.d    <- function (...) drop.levels(subset(...)); # function to drop levels of subset
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For notice: in R-2.12.0 is new function droplevels. It used factor(x) instead of x[,drop=TRUE] to drop levels. – Marek Nov 27 '10 at 21:55

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