# Interpretation of 2D density estimate charts

I created the following charts in R using stat_density_2d() (left) and geom_density2d_filled() (right) respectively. Despite both charts looking visually identical, the levels are significantly different.

How can these values be contextualized or interpreted? For example, does the yellow area in the right chart cover 25% of the observations in the densest area and the cyan area cover 50% respectively. What is the relationship between these different levels?

library(ggplot2)

set.seed(123)
dat <-
data.frame(
X = c(rnorm(300, 3, 2.5), rnorm(150, 7, 2)),
Y = c(rnorm(300, 6, 2.5), rnorm(150, 2, 2)))

ggplot(dat, aes(X, Y)) +
stat_density_2d(geom = "polygon",
aes(fill = after_stat(level)), bins = 4) +
geom_point(alpha = 0.1)

ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "ndensity",
breaks = seq(0.25, 1, length.out = 4)
) +
geom_point(alpha = 0.1)

# EDIT to incorporate chart based on comment
ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "density",
bins = 4) +
geom_point(alpha = 0.1)

• Try contour_var = "density" rather than contour_var = "ndensity" See the ? geom_density_2d_filled help page for a discussion of the differences. Commented Feb 28, 2023 at 23:14
• @MrFlick Indeed, you are right. The more natural comparison would be using density instead of ndensity. However, by using density with 4 bins, there is still an observable difference in levels between the two charts. Thus, I wonder why this is the case and if the ndensity case can be interpreted as mentioned above. I edited the corresponding code to incorporate this.
– carl
Commented Mar 1, 2023 at 7:55
• this has been discussed in extenso here stackoverflow.com/questions/19329318/… and stackoverflow.com/questions/61817440/…. I would close as a duplicate, but given the bounty, this is not possible Commented Mar 3, 2023 at 12:23
• @tjebo I thought I would have a go at answering this by showing how to create contour lines that represent quantiles of the data. I don't think any of the linked posts have done that, but let me know if I am interpreting this wrong. Commented Mar 3, 2023 at 16:17
• @tjebo the linked answer does give a similar outline. Difficult to tell if it's identical, though it outputs a data frame of a single contour rather than allowing quantiles to be correctly specified for a multi-contoured plot. stat_density2d doesn't seem to match at all; I think it gives proportions of maximal density rather than proportions of points within each contour. Commented Mar 3, 2023 at 16:57

Although there has been discussion around this before, I thought I would post an answer here that shows how to ensure that a particular proportion of points are included within each contour line.

To do this, we can get the 2d density with MASS::kde2d, then convert to a raster using terra. We can then order the points according to the density in the associated 2d density grid and find the density at which a quantile is passed with approx

density_quantiles <- function(x, y, quantiles) {
dens <- MASS::kde2d(x, y, n = 500)
df   <- cbind(expand.grid(x = dens\$x, y = dens\$y), z = c(dens\$z))
r    <- terra::rast(df)
ind  <- sapply(seq_along(x), function(i) cellFromXY(r, cbind(x[i], y[i])))
ind  <- ind[order(-r[ind][[1]])]
vals <- r[ind][[1]]
ret  <- approx(seq_along(ind)/length(ind), vals, xout = quantiles)\$y
replace(ret, is.na(ret), max(r[]))
}

This means that if we can specify a vector of quantiles:

quantiles <- c(0, 0.2, 0.4, 0.6, 0.8)

We can get an easy-to-interpret plot showing the areas enclosing 20%, 40%, 60% and 80% of our points like this:

ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "density",
breaks = density_quantiles(dat\$X, dat\$Y, quantiles)) +
geom_point(alpha = 0.1) +
coord_equal() +
scale_fill_viridis_d('Quantiles', l
abels = scales::percent(quantiles[-1]),
direction = -1)

And quartiles would be like this:

quartiles <- c(0, 0.25, 0.5, 0.75)

ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "density",
breaks = density_quantiles(dat\$X, dat\$Y, quartiles)) +
geom_point(alpha = 0.1) +
coord_equal() +
scale_fill_viridis_d('Quartiles', labels = scales::percent(quartiles[-1]),
direction = -1)

Note that this is very different from the levels in the ndensity plot, which are proportions of the maximum density, not areas containing a fixed proportion of points. In other words, if you looked sideways at a 3-D representation of the ndensity plot, the bands would all have equal height, as the following animation shows (see footnote for the code that produces this):

The code seems to give "strange" results when there are pockets of high density, such as this:

set.seed(123)
dat <-
data.frame(
X = c(rnorm(300, 3, 2.5), rnorm(150, 7, 2), rnorm(450, 4, 0.5)),
Y = c(rnorm(300, 6, 2.5), rnorm(150, 2, 2), rnorm(450, 5, 0.5)))

ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "density",
breaks = density_quantiles(dat\$X, dat\$Y, quantiles)) +
geom_point(alpha = 0.1) +
coord_equal() +
scale_fill_viridis_d('Quartiles', labels = scales::percent(quantiles[-1]),
direction = -1)

Where we can see that the 80th centile contains "islands", or non-contiguous areas. However, this is simply because we are still plotting density, and these are the areas above a threshold density value that contain the correct number of points. There is no guarantee that the density bands will be single contiguous areas, wherever one sets the thresholds.

We can see this clearly using a 3D plot of the quantiles version of density_quantiles, where little 'lumps' of low density break our thresholds here and there.

dens <- MASS::kde2d(dat\$X, dat\$Y, n = 1000)

levels <- as.character(cut(dens\$z[-1, -1],
breaks = density_quantiles(dat\$X, dat\$Y, quantiles),
labels = c(scales::viridis_pal()(4))))

persp(dens, col = levels, phi = 20, theta = -20, axes = FALSE, border = NA)

If instead you want the areas to be contiguous, then your problem becomes poorly defined. For example, it's not clear how the following density plot should look if you want contiguous areas:

set.seed(123)
dat <-
data.frame(
X = c(rnorm(150, 3, 2), rnorm(150, 10, 2)),
Y = c(rnorm(150, 3, 2), rnorm(150, 10, 2)))

ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "density",
breaks = density_quantiles(dat\$X, dat\$Y, quartiles)) +
geom_point(alpha = 0.1) +
coord_equal() +
scale_fill_viridis_d('Quartiles', labels = scales::percent(quartiles[-1]),
direction = -1)

In this example, to have contiguous areas, one would have to select one of these clusters as being the central point from which the number of dots is counted. This would give very artificial and misleading results which would not be reflective of density at all, but would have to be a distance function from the point of highest density, and would therefore always be a set of nested circles, like a bullseye.

Code for animation

library(magick)

p1 <- ggplot(dat, aes(X, Y)) +
geom_density2d_filled(
aes(fill = after_stat(level)),
contour_var = "ndensity",
breaks = seq(0.25, 1, length.out = 4),
show.legend = FALSE
) +
geom_point(alpha = 0.1) +
coord_fixed(0.95, expand = FALSE)  +
theme(plot.margin = margin(75, 50, 60, 50))

ggsave('gg.png', p1, width = 480, height = 480, units = 'px', dpi = 72)

dens <- MASS::kde2d(dat\$X, dat\$Y, n = 1000)
df2 <- data.frame(x = dens\$x, y = apply(dens\$z, 1, max)/max(dens\$z))

p2 <- ggplot(df2, aes(x, y)) +
geom_area(fill = scales::viridis_pal()(3)[3]) +
geom_area(fill = scales::viridis_pal()(3)[2],
aes(y = ifelse(y > 0.75, 0.75, y))) +
geom_area(fill = scales::viridis_pal()(3)[1],
aes(y = ifelse(y > 0.5, 0.5, y))) +
geom_area(fill = 'gray92',
aes(y = ifelse(y > 0.25, 0.25, y))) +
coord_fixed(diff(range(dens\$x))) +
geom_hline(yintercept = c(0, 0.25, 0.5, 0.75, 1)) +
theme_classic() +
theme(plot.margin = margin(58, 50, 50, 45))

ggsave('gg2.png', p2, width = 480, height = 480, units = 'px', dpi = 72)

levels <- as.character(cut(dens\$z[-1, -1],
breaks = c(0, 0.25, 0.5, 0.75, 1) * max(dens\$z),
labels = c('gray92', scales::viridis_pal()(3))))

for(i in seq(0, 90, 3)) {
ragg::agg_png(paste0("persp", sprintf("%02d", i), ".png"))
persp(dens, col = levels, phi = i, d = 1000, axes = FALSE,
box = FALSE, border = NA)
dev.off()
}

f <- list.files(pattern = 'persp\\d+\\.png', full.names = TRUE)

c(c(rep(f[31], 10), rev(f), rep(f[1], 10),
rep('gg2.png', 10), rep(f[1], 10), f, rep(f[31], 5),
rep('gg.png', 10))
) %>%
rev(.) %>%