# Use R to make a barplot with bar colors determined by the height of the bar?

I would like to use R to make a barplot of ~100,000 numerical entries. The plot will be dense, which is what I want. So far I am using the following code:

``````sample_var <- c(2,5,3,2,3,2,6,10,20,...)  #Filled with 100,000 entries
barplot(sample_var)
``````

The resulting plot is just what I want, but I would like to make a conditional formatting statement so that bars less than 5 will be black, bars >= 5 and <= 10 are green, and bars > 10 are red.

Any help is appreciated!

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Update: Looking at other solutions, "easily" was an overstatement. However, I'll leave my answer here for reference. Look at my other answer for a solution which does not require `ggplot2`.

You can use the `ggplot2` package to produce that plot easily, using the `bar` geometry and `identity` statistic.

``````library(ggplot2)

sample_var <- log(runif(10000) + 1)
ggplot(data.frame(x=seq(1:length(sample_var)), y=sample_var), aes(x=x, y=y, fill=y)) + geom_bar(stat="identity")
``````

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If you want a simple answer, how about using the next vector as colors.

``````colors = as.character(cut(sample_var,breaks=c(0,5,10,20),labels=c('black','green','red')))
``````

I do not quite remember where the inequalities are set in `cut()` but a simple help should clear everything.

But more importantly, do not make a barplot of 100000 entries.

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You can use ?ifelse to create a vector of colors and include that in the call to `barplot`. To make it possible for the colors to show up with so many bars, do not include a border around your bars (h/t to @musically_ut).

``````set.seed(1)     # this will allow you to get exactly the same data
# this generates data to use for the example plot:
sample_var <- rpois(100000, lambda=5)
cols       <- ifelse(sample_var<=5, "black",
ifelse(sample_var<=10, "green", "red"))

barplot(sample_var, col=cols, border=NA)
``````

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You can get rid of the borders by setting them to `NA`: `barplot(sample_var, col=cols, border=NA)` –  musically_ut Dec 3 '13 at 22:17
@musically_ut, thanks for the tip! –  gung Dec 3 '13 at 22:22
Great answer, can you please tell me what `lambda=5` does? –  jake9115 Dec 3 '13 at 22:26
@jake9115, you wanted to make a barplot from 100k values, but you only provided the 1st 9 (no criticism), so I generated random numbers. It appears you wanted whole numbers where most will be <5, w/ fewer large values, so I generated them from the Poisson distribution. lambda is the parameter that controls the behavior of the Poisson distribution; it is the mean (& the variance). –  gung Dec 3 '13 at 22:32

I find nested ifelse()'s ugly and so generally use `findInterval` to do selections from disjoint choices over a range of intervals. This is an alternative to @gung's answer:

``````set.seed(1)
sample_var <- rpois(100000, lambda=5)
cols   <- c("black", "green", "red") [findInterval(samplevar, c(-Inf, 5, 10, Inf) ) ]

barplot(sample_var, col=cols, border=NA)
``````

This has the advantage that it's very easy to change the cutpoints and colors. (no need to put in an image; it's identical to gung's image.

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Adding a separate answer which does not use `ggplot2` but the native R functions.

You can use the palette functions in R to generate a gradient to suit your granularity:

``````sample_var <- log(runif(100000) + 1)

max.colors <- 1000
cols <- heat.colors(max.colors)

barplot(sample_var, col=cols[ max.colors - floor(max.colors * sample_var / max(sample_var)) ], border=NA)
``````

There are some artefacts of condensing 100,000 lines into 800 or so pixels visible here. Some of the bars (periodically) are absent.

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