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I have a data that gives the mean and SD:

#info mean sd
info1 20.84 4.56
info2 29.18 5.41
info3 38.90 6.22

Actually there are more than 100 lines of this. How can I plot normal distributions for each one of the line in one figure given the above data?

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I assumed you wanted some way to differentiate between each row of data, I chose linetype, but you can also use colour, or a combination of the two. Or if you don't need to differentiate between density estimates, then ignore that part all together :) – Chase Apr 27 '12 at 2:07
up vote 7 down vote accepted

Depending on how large N truly gets, you may want to split this up over a set of multiple charts. But, here's the basic approach. First, you need to generate some random data according to your mean and sd. I chose 1000 random points, you can adjust as necessary. Next, set up a blank plot with the appropriate dimensions, then use lines and density to add the data. I used a for loop because it provided a nice way to specify the linetype for each data point. Finally, add a legend at the end:

dat <- read.table(text = "info mean sd
info1 20.84 4.56
info2 29.18 5.41
info3 38.90 6.22
", header = TRUE)

densities <- apply(dat[, -1], 1, function(x) rnorm(n = 1000, mean = x[1], sd = x[2]))
colnames(densities) <- dat$info

plot(0, type = "n", xlim = c(min(densities), max(densities)), ylim = c(0, .2))
for (d in 1:ncol(densities)){
  lines(density(densities[, d]), lty = d)
legend("topright", legend=colnames(densities), lty=1:ncol(densities))

enter image description here

Or, use ggplot2 which can have lots of benefits, namely it will specify reasonable xlim and ylim values for you automagically, and do sensible things with the legend without much fuss.

#Put into long format
densities.m <- melt(densities)
ggplot(densities.m, aes(value, linetype = Var2)) + geom_density()

enter image description here

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Why go through the process of generating random data so you can use a density estimate when you could just plot the actual densities without generating data? – Dason Apr 27 '12 at 4:44
@Dason - my initial pass at the question was that the OP wanted a scatterplot of the points, but then realized he probably wanted the density are right though - not necessary if the end goal is simply the make the density curves. Tyler's answer shows how to use dnorm directly. – Chase Apr 27 '12 at 12:30

Again a dollar short and a day late. Chase has a very thorough response. Here's my crack at it:

dat <- read.table(text="info  mean  sd
info1 20.84 4.56
info2 29.18 5.41
info3 38.90 6.22", header=T)

dat <- transform(dat, lower= mean-3*sd, upper= mean+3*sd)

plot(x=c(min(dat$lower)-2, max(dat$upper)+2), y=c(0, .25), ylab="", 
    xlim=c(min(dat$lower)-2, max(dat$upper)+2), xlab="", 
    axes=FALSE, xaxs = "i", type="n")

FUN <- function(rownum) {
    curve(dnorm(x,dat[rownum, 2], dat[rownum, 3]),
        xlim=c(c(min(dat$lower)-2, max(dat$upper)+2)), 
        ylim=c(0, .22),
        ylab="", xlab="")

lapply(seq_len(nrow(dat)), function(i) FUN(i))

enter image description here

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