How to produce different geom_vline in different facets in R?

非 Y 不嫁゛ 提交于 2019-12-03 13:14:24

Here's how you can put in different geom_vline for different iris species:

ggplot(iris, aes(Sepal.Length, Petal.Length)) + facet_wrap(~Species, scales="free") + geom_point() + 
  geom_vline(data=filter(iris, Species=="setosa"), aes(xintercept=5), colour="pink") + 
  geom_vline(data=filter(iris, Species=="versicolor"), aes(xintercept=6), colour="blue") + 
  geom_hline(data=filter(iris, Species=="virginica"), aes(yintercept=6), colour="green") 

You can create a data.frame with one column being intercept values to be used for lines and a second column with Sex. So that when using facet_wrap, they are separated.
Something like:

dataInt <- train3 %>%
  group_by(Sex) %>%
  summarize(Int = mean(Age))

Then you can use it in your script:

g<-ggplot(data = train3, aes(x = Age, y = Survived, colour = factor(Pclass))) + 
  facet_wrap(~Sex) +
  geom_vline(data=dataInt, xintercept=Int)

Without your data, I cannot test this.

Building on @Sébastien Rochette's answer above; Rather than creating a new data frame dataInt with the function summarize(Int = mean(Age)), which didn't work for me as I had multiple levels within each facet plot, use mutate instead.

train3 <- train3 %>%
  group_by(Sex) %>%
  mutate(Int = mean(Age))

And then you can use train3 data-frame in

g<-ggplot(data = train3, aes(x = Age, y = Survived, colour = factor(Pclass))) + 
  facet_wrap(~Sex) +
  geom_vline(data=train3, xintercept=Int)

This works but I fear it may have created a geom_vline for all values, because each mean will be repeated within each level of each factor within the dataframe.

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