This started as a comment but it seemed unfair to not turn into an answer. To answer your question (even on Stack Overflow) properly we need to know how "mydata" is structured. I assumed at first it was a data frame with 5 rows and 2 or 3 columns but in this case your code makes no sense. However, if this were how it is structured here is one way to do what I think you want:
mydata <- data.frame(
row.names =c(100, 200, 300, 400, 500),
Male =c(68.33333, 53.33333, 70, 70, 61.66667),
Female =c(31.66667, 46.66667, 30, 30, 38.33333))
x <- barplot(t(as.matrix(mydata)), col=c("yellow", "green"),
legend=TRUE, border=NA, xlim=c(0,8), args.legend=
ylab="Cumulative percentage", xlab="Village number")
text(x, mydata$Male-10, labels=round(mydata$Male), col="black")
text(x, mydata$Male+10, labels=100-round(mydata$Male))
which produces the following:
An alternative would be to set the y value to 40 for all the male text labels, and 80 for all the females - this would have the advantage of less confusing jitter of the labels, and the disadvantage that the text vertical position is no longer notionally attached to data.
Personally, I don't much like this barplot at all, although there are many far worse crimes against data visualisation than a straightforward bar plot. Numbers on plots are cluttering and detract from the visual impact of the actual mapping of data to colours, shapes and sizes. I'd rather a simple dot plot like:
ggplot(mydata, aes(x=row.names(mydata), y=Male)) +
labs(x="Village number\n", y="Percentage male") +
There is less redundant clutter in the plot, a higher data to ink ratio, etc. However in the end you need to produce the plot that will mean something for your audience.