# Creating a cumulative step graph in R

Say I have this example data frame

``````set.seed(12345)
n1 <- 3
n2 <- 10
n3 <- 60

times <- seq(0, 100, 0.5)

individual <- c(rep(1, n1),
rep(2, n2),
rep(3, n3))

events <- c(sort(sample(times, n1)),
sort(sample(times, n2)),
sort(sample(times, n3)))

df <- data.frame(individual = individual, events = events)
``````

Which gives

``````> head(df, 10)
individual events
1           1   72.0
2           1   75.5
3           1   87.5
4           2    3.0
5           2   14.5
6           2   16.5
7           2   32.0
8           2   45.5
9           2   50.0
10          2   70.5
``````

I would like to plot a cumulative step graph of the events so that I get one line per individual which goes up by 1 each time an event is "encountered".

So, for instance individual 1 will be 0 up to 72.0, then go up to 1, until 75.5 when it becomes 2 and up to 3 at 87.5 to the end of the graph.

What would be the easiest way to do that?

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Does that `df\$counter <- ave(df\$individual, df\$individual, FUN = seq_along)` help? Not sure how you want your graph to look like but this should give you the "event count" –  vaettchen Oct 27 '12 at 9:41
@vaettchen: yes it does! –  nico Oct 27 '12 at 10:41

``````df\$step <- 1

library(plyr)
df <- ddply(df,.(individual),transform,step=cumsum(step))

plot(step~events,data=df[df\$individual==1,],type="s",xlim=c(0,max(df\$events)),ylim=c(0,max(df\$step)),xlab="time",ylab="step")
lines(step~events,data=df[df\$individual==2,],type="s",col=2)
lines(step~events,data=df[df\$individual==3,],type="s",col=3)
``````

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Great! I love base graphics answers :) It would be perfect if there was a way to start the graphs from 0 (I guess I could simply add a 0 at the beginning). I guess I would use `apply` on `unique(df\$Individual)` to do the plot in one function call. –  nico Oct 27 '12 at 11:45

Use `ggplot2`:

``````library(ggplot2)

# Add step height information with sequence and rle
df\$step <- sequence(rle(df\$individual)\$lengths)

# plot
df\$individual <- factor(df\$individual)
ggplot(df, aes(x=events, group=individual, colour=individual, y=step)) +
geom_step()
``````

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This is exactly what I was looking for. I will wait a couple of days before accepting this to see if there are other answers (I would like to see an answer using base graphics). –  nico Oct 27 '12 at 10:38

There is also the `stepfun` function in the stats package. Using that, you could use the `plot` method for that object class:

``````sdf <- split(df, individual)

plot(1, 1, type = "n", xlim = c(0, max(events)), ylim = c(0, max(table(individual))),
ylab = "step", xlab = "time")

sfun <- lapply(sdf, function(x){
sf <- stepfun(sort(x\$events), seq_len(nrow(x) + 1) - 1)
plot(sf, add = TRUE, col = unique(x\$individual), do.points = FALSE)
})
``````

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