I have the code that creates a boxplot, using ggplot in R, I want to label my outliers with the year and Battle.

Here is my code to create my boxplot

require(ggplot2)
ggplot(seabattle, aes(x=PortugesOutcome,y=RatioPort2Dutch ),xlim="OutCome", 
y="Ratio of Portuguese to Dutch/British ships") + 
geom_boxplot(outlier.size=2,outlier.colour="green") + 
stat_summary(fun.y="mean", geom = "point", shape=23, size =3, fill="pink") + 
ggtitle("Portugese Sea Battles")

Can anyone help? I knew this is correct, I just want to label the outliers.

  • 2
    Where does data seabattle come from? Can you dput the data or provide sample data to make this example reproducible? – JasonAizkalns Nov 4 '15 at 14:48
  • Anything you've already tried? – Heroka Nov 4 '15 at 15:02

The following is a reproducible solution that uses dplyr and the built-in mtcars dataset.

Walking through the code: First, create a function, is_outlier that will return a boolean TRUE/FALSE if the value passed to it is an outlier. We then perform the "analysis/checking" and plot the data -- first we group_by our variable (cyl in this example, in your example, this would be PortugesOutcome) and we add a variable outlier in the call to mutate (if the drat variable is an outlier [note this corresponds to RatioPort2Dutch in your example], we will pass the drat value, otherwise we will return NA so that value is not plotted). Finally, we plot the results and plot the text values via geom_text and an aesthetic label equal to our new variable; in addition, we offset the text (slide it a bit to the right) with hjust so that we can see the values next to, rather than on top of, the outlier points.

library(dplyr)
library(ggplot2)

is_outlier <- function(x) {
  return(x < quantile(x, 0.25) - 1.5 * IQR(x) | x > quantile(x, 0.75) + 1.5 * IQR(x))
}

mtcars %>%
  group_by(cyl) %>%
  mutate(outlier = ifelse(is_outlier(drat), drat, as.numeric(NA))) %>%
  ggplot(., aes(x = factor(cyl), y = drat)) +
    geom_boxplot() +
    geom_text(aes(label = outlier), na.rm = TRUE, hjust = -0.3)

Boxplot

Does this work for you?

library(ggplot2)
library(data.table)

#generate some data
set.seed(123)
n=500
dat <- data.table(group=c("A","B"),value=rnorm(n))

ggplot defines an outlier by default as something that's > 1.5*IQR from the borders of the box.

#function that takes in vector of data and a coefficient,
#returns boolean vector if a certain point is an outlier or not
check_outlier <- function(v, coef=1.5){
  quantiles <- quantile(v,probs=c(0.25,0.75))
  IQR <- quantiles[2]-quantiles[1]
  res <- v < (quantiles[1]-coef*IQR)|v > (quantiles[2]+coef*IQR)
  return(res)
}

#apply this to our data
dat[,outlier:=check_outlier(value),by=group]
dat[,label:=ifelse(outlier,"label","")]

#plot
ggplot(dat,aes(x=group,y=value))+geom_boxplot()+geom_text(aes(label=label),hjust=-0.3)

enter image description here

To label the outliers with rownames (based on JasonAizkalns answer)

library(dplyr)
library(ggplot2)
library(tibble)

is_outlier <- function(x) {
  return(x < quantile(x, 0.25) - 1.5 * IQR(x) | x > quantile(x, 0.75) + 1.5 * IQR(x))
}

dat <- mtcars %>% tibble::rownames_to_column(var="outlier") %>% group_by(cyl) %>% mutate(is_outlier=ifelse(is_outlier(drat), drat, as.numeric(NA)))
dat$outlier[which(is.na(dat$is_outlier))] <- as.numeric(NA)

ggplot(dat, aes(y=drat, x=factor(cyl))) + geom_boxplot() + geom_text(aes(label=outlier),na.rm=TRUE,nudge_y=0.05)

boxplot with outliers name

Similar answer to above, but gets outliers directly from ggplot2, thus avoiding any potential conflict in method:

# calculate boxplot object
g <- ggplot(mtcars, aes(factor(cyl), drat)) + geom_boxplot()

# get list of outliers 
out <- ggplot_build(g)[["data"]][[1]][["outliers"]]

# label list elements with factor levels
names(out) <- levels(factor(mtcars$cyl))

# convert to tidy data
tidyout <- purrr::map_df(out, tibble::as_tibble, .id = "cyl")

# plot boxplots with labels
g + geom_text(data = tidyout, aes(cyl, value, label = value), 
              hjust = -.3)

enter image description here

With a small twist on @JasonAizkalns solution you can label outliers with their location in your data frame.

mtcars[,'row'] <- row(mtcars)[,1]
...
mutate(outlier = ifelse(is_outlier(drat), row, as.numeric(NA)))
...

I load the data frame into the R Studio Environment, so I can then take a closer look at the data in outlier rows.

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