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I'm running some simulations that I was wondering to plot the outcomes in a beautiful ggplot, but it seems that ggplot can't deal with list objects. Does anyone knows how to paste the results into ggplot chart?

   N <- 8619170         
   nn <- c(1000, 1200, 3000)
   p <- .27     
   nsim <- 100

    phat <- list()
    for (i in 1:length(nn)) {
    n <- nn[i]
    x <- rhyper(nsim, N * p, N * (1 - p), n)
    phat[[i]] <- x / n

Ugly solution:

    names(phat) <- paste("n=", nn)
    stripchart(phat, method="stack")
    abline(v=p, lty=2, col="red")
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closed as not a real question by joran, mnel, RivieraKid, stealthyninja, Linger Nov 26 '12 at 0:03

It's difficult to tell what is being asked here. This question is ambiguous, vague, incomplete, overly broad, or rhetorical and cannot be reasonably answered in its current form. For help clarifying this question so that it can be reopened, visit the help center. If this question can be reworded to fit the rules in the help center, please edit the question.

Once you have your list in a format that ggplot2 likes, see some of the examples at ?geom_dotplot –  Sandy Muspratt Nov 25 '12 at 23:42
I think the question is a real question, i.e., how to plot data given in lists using ggplot. –  highBandWidth Sep 24 '14 at 13:06

2 Answers 2

up vote 5 down vote accepted

ggplot2 need a data.frame as a source data. So you need to :

  1. transform the data with reshape2 (or plyr or many other tools)
  2. plot using qplot or ggplot


     ## transform data
     h <- do.call(cbind, phat)
     h.melt <- melt(h)
     ## rename variables so they look nicer on plots
     names(h.melt) <- c("test","N","value")     
     ## stripchart (not shown)
     qplot(data = h.melt, x = value,y = Var2,color=Var2)+geom_point()
     ## histogram (not shown)    
     ## dotplot with rug (not shown)
     ##density plot with rug (shown below)

    enter image description here

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Just to riff off this answer a little, we might name the columns so they look better in the plot and try histograms, density plots, dotplots, and maybe add rugs. Things like: names(h.melt) <- c("test","N","value") ggplot(h.melt,aes(x=value,fill=N))+geom_histogram()+facet_grid(N~.)+geom_rug() ggplot(h.melt,aes(x=value,fill=N))+geom_dotplot()+facet_grid(N~.)+geom_rug() ggplot(h.melt,aes(x=value,fill=N))+geom_density()+facet_grid(N~.)+geom_rug() –  MattBagg Nov 25 '12 at 23:35
@Mattbagg I edit it –  agstudy Nov 25 '12 at 23:58

The best I could do following your clue is:

qplot(data = h.melt, x = value,y = Var2)+ geom_point(shape=1, size=5)

but still it doesn't reflect the probabilities; the points should be stacked as a sort of histogram to reflect the probabilities.

A different approach is using the density function, but it can messy things if I have many samples categories to plot out.

ggplot(h.melt, aes(x=value, fill=Var2)) + geom_density(alpha=.5, position="identity")
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