ggplot2: histogram with normal curve

RGgplot2Curve

R Problem Overview


I've been trying to superimpose a normal curve over my histogram with ggplot 2.

My formula:

data <- read.csv (path...)

ggplot(data, aes(V2)) + 
  geom_histogram(alpha=0.3, fill='white', colour='black', binwidth=.04)

I tried several things:

+ stat_function(fun=dnorm)  

....didn't change anything

+ stat_density(geom = "line", colour = "red")

...gave me a straight red line on the x-axis.

+ geom_density()  

doesn't work for me because I want to keep my frequency values on the y-axis, and want no density values.

Any suggestions?

Thanks in advance for any tips!

Solution found!

+geom_density(aes(y=0.045*..count..), colour="black", adjust=4)

R Solutions


Solution 1 - R

Think I got it:

set.seed(1)
df <- data.frame(PF = 10*rnorm(1000))
ggplot(df, aes(x = PF)) + 
    geom_histogram(aes(y =..density..),
                   breaks = seq(-50, 50, by = 10), 
                   colour = "black", 
                   fill = "white") +
stat_function(fun = dnorm, args = list(mean = mean(df$PF), sd = sd(df$PF)))

enter image description here

Solution 2 - R

This has been answered here and partially here.

The area under a density curve equals 1, and the area under the histogram equals the width of the bars times the sum of their height ie. the binwidth times the total number of non-missing observations. To fit both on the same graph, one or other needs to be rescaled so that their areas match.

If you want the y-axis to have frequency counts, there are a number of options:

First simulate some data.

library(ggplot2)

set.seed(1)
dat_hist <- data.frame(
  group = c(rep("A", 200), rep("B",150)),
  value = c(rnorm(200, 20, 5), rnorm(150,25,10)))

# Set desired binwidth and number of non-missing obs
bw = 2
n_obs = sum(!is.na(dat_hist$value))

Option 1: Plot both histogram and density curve as density and then rescale the y axis

This is perhaps the easiest approach for a single histogram. Using the approach suggested by Carlos, plot both histogram and density curve as density

g <- ggplot(dat_hist, aes(value))  + 
geom_histogram(aes(y = ..density..), binwidth = bw, colour = "black") + 
stat_function(fun = dnorm, args = list(mean = mean(dat_hist$value), sd = sd(dat_hist$value)))

And then rescale the y axis.

ybreaks = seq(0,50,5) 
## On primary axis
g + scale_y_continuous("Counts", breaks = round(ybreaks / (bw * n_obs),3), labels = ybreaks)

## Or on secondary axis
g + scale_y_continuous("Density", sec.axis = sec_axis(
  trans = ~ . * bw * n_obs, name = "Counts", breaks = ybreaks))

Single histogram with normal curve

Option 2: Rescale the density curve using stat_function

With code tidied as per PatrickT's answer.

ggplot(dat_hist, aes(value))  + 
  geom_histogram(colour = "black", binwidth = bw) + 
  stat_function(fun = function(x) 
    dnorm(x, mean = mean(dat_hist$value), sd = sd(dat_hist$value)) * bw * n_obs)

Option 3: Create an external dataset and plot using geom_line.

Unlike the above options, this one works with facets. (EDITED to provide dplyr rather than plyr based solution). Note, the summarised dataset is being used as the primary, and the raw passed in for the histogram only.

library(tidyverse)

dat_hist %>% 
  group_by(group) %>% 
  nest(data = c(value)) %>% 
  mutate(y = map(data, ~ dnorm(
    .$value, mean = mean(.$value), sd = sd(.$value)
    ) * bw * sum(!is.na(.$value)))) %>% 
  unnest(c(data,y)) %>% 
  
  ggplot(aes(x = value)) +
  geom_histogram(data = dat_hist, binwidth = bw, colour = "black") +
  geom_line(aes(y = y)) + 
  facet_wrap(~ group)

Histogram with normal curve and facets

Option 4: Create external functions to edit the data on the fly

A bit over the top perhaps, but might be useful for someone?

## Function to create scaled dnorm data along full x axis range
dnorm_scaled <- function(data, x = NULL, binwidth = 1, xlim = NULL) {
  .x <- na.omit(data[,x])
  if(is.null(xlim))
    xlim = c(min(.x), max(.x))
  x_range = seq(xlim[1], xlim[2], length.out = 101)
  setNames(
    data.frame(
    x = x_range,
    y = dnorm(x_range, mean = mean(.x), sd = sd(.x)) * length(.x) * binwidth),
    c(x, "y"))
}

## Function to apply over groups
dnorm_scaled_group <- function(data, x = NULL, group = NULL, binwidth = NULL, xlim = NULL) {
  dat_hists <- lapply(
    split(data, data[, group]), dnorm_scaled,
      x = x, binwidth = binwidth, xlim = xlim)
  for(g in names(dat_hists))
    dat_hists[[g]][, "group"] <- g
  setNames(do.call(rbind, dat_hists), c(x, "y", group))
}

## Single histogram
ggplot(dat_hist, aes(value)) + 
  geom_histogram(binwidth = bw, colour = "black") + 
  geom_line(data = ~ dnorm_scaled(., "value", binwidth = bw), 
            aes(y = y)) 

## With a single faceting variable
ggplot(dat_hist, aes(value))  + 
  geom_histogram(binwidth = 2, colour = "black") + 
  geom_line(data = ~ dnorm_scaled_group(
    ., x = "value", group = "group", binwidth = 2, xlim = c(0,50)), 
    aes(y = y)) +
  facet_wrap(~ group)

Solution 3 - R

This is an extended comment on JWilliman's answer. I found J's answer very useful. While playing around I discovered a way to simplify the code. I'm not saying it is a better way, but I thought I would mention it.

Note that JWilliman's answer provides the count on the y-axis and a "hack" to scale the corresponding density normal approximation (which otherwise would cover a total area of 1 and have therefore a much lower peak).

Main point of this comment: simpler syntax inside stat_function, by passing the needed parameters to the aesthetics function, e.g.

aes(x = x, mean = 0, sd = 1, binwidth = 0.3, n = 1000)

This avoids having to pass args = to stat_function and is therefore more user-friendly. Okay, it's not very different, but hopefully someone will find it interesting.

# parameters that will be passed to ``stat_function``
n = 1000
mean = 0
sd = 1
binwidth = 0.3 # passed to geom_histogram and stat_function
set.seed(1)
df <- data.frame(x = rnorm(n, mean, sd))

ggplot(df, aes(x = x, mean = mean, sd = sd, binwidth = binwidth, n = n)) +
    theme_bw() +
    geom_histogram(binwidth = binwidth, 
        colour = "white", fill = "cornflowerblue", size = 0.1) +
stat_function(fun = function(x) dnorm(x, mean = mean, sd = sd) * n * binwidth,
    color = "darkred", size = 1)

enter image description here

Solution 4 - R

This code should do it:

set.seed(1)
z <- rnorm(1000)

qplot(z, geom = "blank") + 
geom_histogram(aes(y = ..density..)) + 
stat_density(geom = "line", aes(colour = "bla")) + 
stat_function(fun = dnorm, aes(x = z, colour = "blabla")) + 
scale_colour_manual(name = "", values = c("red", "green"), 
                               breaks = c("bla", "blabla"), 
                               labels = c("kernel_est", "norm_curv")) + 
theme(legend.position = "bottom", legend.direction = "horizontal")

enter image description here

Note: I used qplot but you can use the more versatile ggplot.

Solution 5 - R

Here's a tidyverse informed version:

Setup

library(tidyverse)

Some data

d <- read_csv("https://vincentarelbundock.github.io/Rdatasets/csv/openintro/speed_gender_height.csv")

Preparing data

We'll use a "total" histogram for the whole sample, to that end, we'll need to remove the grouping information from the data.

d2 <-
  d |> 
  select(-gender)

Here's a data set with summary data:

d_summary <-
  d %>% 
  group_by(gender) %>% 
  summarise(height_m = mean(height, na.rm = T),
            height_sd = sd(height, na.rm = T))

d_summary

Plot it

d %>% 
  ggplot() +
  aes() +
  geom_histogram(aes(y = ..density.., x = height, fill = gender)) +
  facet_wrap(~ gender) +
  geom_histogram(data = d2, aes(y = ..density.., x = height), 
                 alpha = .5) +
  stat_function(data = d_summary %>% filter(gender == "female"),
                fun = dnorm,
                #color = "red",
                args = list(mean = filter(d_summary, 
                                          gender == "female")$height_m,
                            sd = filter(d_summary, 
                                        gender == "female")$height_sd)) +
  stat_function(data = d_summary %>% filter(gender == "male"),
                fun = dnorm,
                #color = "red",
                args = list(mean = filter(d_summary, 
                                          gender == "male")$height_m,
                            sd = filter(d_summary, 
                                        gender == "male")$height_sd)) +
  theme(legend.position = "none",
        axis.title.y = element_blank(),
        axis.text.y = element_blank(),
        axis.ticks.y = element_blank()) +
  labs(title = "Facetted histograms with overlaid normal curves",
       caption = "The grey histograms shows the whole distribution (over) both groups, i.e. females and men") +
  scale_fill_brewer(type = "qual", palette = "Set1")
   

Attributions

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Content TypeOriginal AuthorOriginal Content on Stackoverflow
QuestionBloomyView Question on Stackoverflow
Solution 1 - RCarlos Eduardo VazquezView Answer on Stackoverflow
Solution 2 - RJWillimanView Answer on Stackoverflow
Solution 3 - RPatrickTView Answer on Stackoverflow
Solution 4 - RdickoaView Answer on Stackoverflow
Solution 5 - RSebastian SauerView Answer on Stackoverflow