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I would like to use stat_density() and facet_wrap() in the ggplot2 package to create kernel density plots for different groupings, but I want to make sure that I use the same bandwidth for every plot. Can I be sure that stat_density() uses the same bandwidth for every plot?

For example, using diamonds:

library(ggplot2)    
ggplot(diamonds, aes(x = carat)) + 
  stat_density() + 
  facet_wrap(~ cut) + 
  scale_x_log()

In the documentation it shows that I can use adjust to adjust the automatic bandwidth, but this just applies a multiple and returns me to the original question. stat_density() also has a ... option, but I haven't been able to pass though the density() option bw, like this:

ggplot(diamonds, aes(x = carat)) + 
  stat_density(bw = 1) + 
  facet_wrap(~ cut) + 
  scale_x_log()

So, if stat_density() isn't using the same bandwidth across all facets, is there a way that I can force this? I tried a ddply() solution with transform() and density(), but this fails because density() doesn't necessarily return the same number of x and y values as the input. Any ideas? Thanks!

Edit It looks like ggplot2 assigns an optimal bandwidth to each facet (it looks like @Ramnath and Dianardo, Fortin, and Lemieux Econometrica 1996 agree with this), not the constant bandwidth I was seeking. But, if I did want a constant bandwidth across all facets, my attempt below fails.

my.density <- function(x) {
    temp <- density(x$carat, bw = 0.5)
    return(data.frame(carat = temp$x, density = temp$y))
}
temp <- ddply(diamonds, .(cut), my.density)
ggplot(temp, aes(x = carat, y = density)) + 
             geom_point() + 
             facet_wrap(~ cut) + 
             scale_x_log()
Warning messages:
1: In match.fun(get(".transform", .))(values) : NaNs produced
2: In match.fun(get(".transform", .))(values) : NaNs produced
3: In match.fun(get(".transform", .))(values) : NaNs produced
4: In match.fun(get(".transform", .))(values) : NaNs produced
5: In match.fun(get(".transform", .))(values) : NaNs produced
6: Removed 84 rows containing missing values (geom_point). 
7: Removed 113 rows containing missing values (geom_point). 
8: Removed 98 rows containing missing values (geom_point). 
9: Removed 98 rows containing missing values (geom_point). 
10: Removed 106 rows containing missing values (geom_point). 
share|improve this question
    
Looking at the documentation for stat_density it seems to be using the default version of density. digging further, looking at the documentation for density, you find that it uses bw.nrd0 method to compute bandwidth. you should look at this description and figure out how to pre-transform your data so that you are able to achieve your objective. –  Ramnath Apr 27 '11 at 14:06
    
@Ramnath -- Thanks! I had followed that path, but couldn't myself any closer to an answer. But maybe that makes my fundamental question, "Which stat_density() parameters are set using info from all facets? And which are set within each facet?" –  Richard Herron Apr 27 '11 at 14:21
    
@richardh -- I think that statistical transformations are applied after faceting the data. Hence, if the bw.nrd0 method computes bandwidth based on the data, then you would have different bandwidths in the facets. To get more control, my suggestion would be to use ddply and compute the density estimates as you want them and then pass it to ggplot as an aesthetic. I can cook up an example if you would like. Out of curiousity, why would you want the same bandwidth across all plots? –  Ramnath Apr 27 '11 at 14:28
    
@Ramnath -- Good point on the bandwidth! I checked the "reference" for this technique (Dinardo, Fortin, and Lemieux Econometrica 1996) and it looks like they do use variable bandwidth, set optimally for each facet. I'll make sure we really want constant bandwidth. But for my own education, I would love to see how you would do it -- my approach fails (I'll paste above). –  Richard Herron Apr 27 '11 at 15:09
1  
@richard -- actually the warnings are on account of the negative values for carat in my.density. a slight modification of your code would do the trick: ggplot(temp, aes(x = carat, y = density)) + geom_line(subset = .(carat > 0)) + facet_wrap(~ cut) + scale_x_log(). let me know if this is what you were looking for –  Ramnath Apr 28 '11 at 1:33
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1 Answer 1

up vote 2 down vote accepted

The warnings are on account of the negative values for carat in my.density. A slight modification of your code would do the trick:

  ggplot(temp, aes(x = carat, y = density)) + 
    geom_line(subset = .(carat > 0)) +
   facet_wrap(~ cut) + scale_x_log() 

Hope this is useful

share|improve this answer
    
Technically, it would be even better to use a density estimator that allows you to fix the range of the estimated density. –  hadley Apr 29 '11 at 13:37
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