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I would like to draw a hollow histogram that has no vertical bars drawn inside of it, but just an outline. I couldn't find any way to do it with geom_histogram. The geom_step+stat_bin combination seemed like it could do the job. However, the bins of geom_step+stat_bin are shifted by a half bin either to the right or to the left, depending on the step's direction= parameter value. It seems like it is doing its "steps" WRT bin centers. Is there any way to change this behavior so it would do the "steps" at bin edges?

Here's an illustration:

d <- data.frame(x=rnorm(1000))
qplot(x, data=d, geom="histogram",
      breaks=seq(-4,4,by=.5), color=I("red"), fill = I("transparent")) +
geom_step(stat="bin", breaks=seq(-4,4,by=.5), color="black", direction="vh")

enter image description here

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4 Answers 4

up vote 10 down vote accepted

I propose making a new Geom like so:

library(ggplot2)
library(proto)

geom_stephist <- function(mapping = NULL, data = NULL, stat="bin", position="identity", ...) {
  GeomStepHist$new(mapping=mapping, data=data, stat=stat, position=position, ...)
}

GeomStepHist <- proto(ggplot2:::Geom, {
  objname <- "stephist"

  default_stat <- function(.) StatBin
  default_aes <- function(.) aes(colour="black", size=0.5, linetype=1, alpha = NA)

  reparameterise <- function(., df, params) {
    transform(df,
              ymin = pmin(y, 0), ymax = pmax(y, 0),
              xmin = x - width / 2, xmax = x + width / 2, width = NULL
    )
  }

  draw <- function(., data, scales, coordinates, ...) {
    data <- as.data.frame(data)[order(data$x), ]

    n <- nrow(data)
    i <- rep(1:n, each=2)
    newdata <- rbind(
      transform(data[1, ], x=xmin, y=0),
      transform(data[i, ], x=c(rbind(data$xmin, data$xmax))),
      transform(data[n, ], x=xmax, y=0)
    )
    rownames(newdata) <- NULL

    GeomPath$draw(newdata, scales, coordinates, ...)
  }
  guide_geom <- function(.) "path"
})

This also works for non-uniform breaks. To illustrate the usage:

d <- data.frame(x=runif(1000, -5, 5))
ggplot(d, aes(x)) +
  geom_histogram(breaks=seq(-4,4,by=.5), color="red", fill=NA) +
  geom_stephist(breaks=seq(-4,4,by=.5), color="black")

plot

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That's a nice seamless hack! It even allows the usual simple faceting and default binning. But the most natural solution would probably be to add a parameter to geom_histogram for disabling inner vertical bars. –  Vadim Khotilovich May 15 '14 at 22:01
    
@VadimKhotilovich The parameter option is difficult, I think, because geom_histogram is built about stat_bin and geom_bar and geom_bar isn't really set up to selectively include/exclude only portions of its vertical edges. –  joran May 16 '14 at 15:47
    
@joran: such technical difficulties cannot overturn the fact that "a histogram is not a bar chart" (it's a quote straight from "The Grammar of Graphics" book). Generally speaking, histograms represent distributions and bar charts are for comparing categories. While ggplot2 implements a histogram as a trivial alias over bar+bin, it doesn't have to stay that way. And I would add that a histogram is not a step chart either. –  Vadim Khotilovich May 16 '14 at 21:28
    
@VadimKhotilovich There's no need to lecture me, I'm well aware of all that. I was simply explaining why such a change might be more work than is feasible given limited developer time, that's all. –  joran May 16 '14 at 21:37
    
@joran: thanks for clarifying. It's sometimes hard to guess people's intentions from small posts... If I would ever have time to dig deeper into the ggplot2 source and proto, I would contribute to improving the histogram. Some things in it were bugging me for a while. –  Vadim Khotilovich May 16 '14 at 22:16

Yet another one. Use ggplot_build to build a plot object of the histogram for rendering. From this object x and y values are extracted, to be used for geom_step. Use by to offset x values.

by <- 0.5
p1 <- ggplot(data = d, aes(x = x)) +
  geom_histogram(breaks = seq(from = -4, to = 4, by = by),
                 color = "red", fill = "transparent")

df <- ggplot_build(p1)$data[[1]][ , c("x", "y")]

p1 +
  geom_step(data = df, aes(x = x - by/2, y = y))

enter image description here

Edit following comment from @Vadim Khotilovich (Thanks!)

The xmin from the plot object can be used instead (-> no need for offset adjustment)

df <- ggplot_build(p1)$data[[1]][ , c("xmin", "y")]

p1 +
  geom_step(data = df, aes(x = xmin, y = y))   
share|improve this answer
    
Thanks for pointing me to ggplot_build. It provides lots of potentially useful data! In this particular case though, I would subset it by [ , c("xmin", "y")] to get the lower edges directly. –  Vadim Khotilovich May 15 '14 at 22:09
    
You are welcome. Yes, when you run out of 'normal' ggplot options, it can be quite fruitful to walk the ggplot_build path. You can also manipulate the data within the plot object and then plot it using grid functions. –  Henrik May 15 '14 at 22:25
    
@VadimKhotilovich, Thanks for suggesting the use of xmin instead. I updated the answer. –  Henrik May 16 '14 at 12:48

This isn't ideal, but it's the best I can come up with:

h <- hist(d$x,breaks=seq(-4,4,by=.5))
d1 <- data.frame(x = h$breaks,y = c(h$counts,NA))

ggplot() + 
    geom_histogram(data = d,aes(x = x),breaks = seq(-4,4,by=.5),
                                 color = "red",fill = "transparent") + 
    geom_step(data = d1,aes(x = x,y = y),stat = "identity")

enter image description here

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@Henrik I like all three of these solutions, frankly. –  joran May 15 '14 at 19:09

An alternative, also less than ideal:

qplot(x, data=d, geom="histogram", breaks=seq(-4,4,by=.5), color=I("red"), fill = I("transparent")) +
  stat_summary(aes(x=round(x * 2 - .5) / 2, y=1), fun.y=length, geom="step")

Missing some bins that you can probably add back if you mess around a bit. Only (somewhat meaningless) advantage is it is more in ggplot than @Joran's answer, though even that is debatable.

enter image description here

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