# calculate differences in dataframe

I have a dataframe that looks like this:

``````set.seed(50)
data.frame(distance=c(rep("long", 5), rep("short", 5)),
year=rep(2002:2006),
mean.length=rnorm(10))

distance year mean.length
1      long 2002  0.54966989
2      long 2003 -0.84160374
3      long 2004  0.03299794
4      long 2005  0.52414971
5      long 2006 -1.72760411
6     short 2002 -0.27786453
7     short 2003  0.36082844
8     short 2004 -0.59091244
9     short 2005  0.97559055
10    short 2006 -1.44574995
``````

I need to calculate the difference between in `mean.length` between `long` and `short` in each year. Whats fastest way of doing this?

Here's one way using plyr:

``````set.seed(50)
df <- data.frame(distance=c(rep("long", 5),rep("short", 5)),
year=rep(2002:2006),
mean.length=rnorm(10))

library(plyr)
aggregation.fn <- function(df) {
data.frame(year=df\$year[1],
diff=(df\$mean.length[df\$distance == "long"] -
df\$mean.length[df\$distance == "short"]))}
new.df <- ddply(df, "year", aggregation.fn)
``````

Gives you

``````> new.df
year       diff
1 2002  0.8275344
2 2003 -1.2024322
3 2004  0.6239104
4 2005 -0.4514408
5 2006 -0.2818542
``````

A second way

``````df <- df[order(df\$year, df\$distance), ]
n <- dim(df)[1]
df\$new.year <- c(1, df\$year[2:n] != df\$year[1:(n-1)])
df\$diff <- c(-diff(df\$mean.length), NA)
df\$diff[!df\$new.year] <- NA
new.df.2 <- df[!is.na(df\$diff), c("year", "diff")]

all(new.df.2 == new.df)  # True
``````
• You can save some typing with `ddply(df,"year",summarise,val = mean.length[distance == 'long'] - mean.length[distance == 'short'])`, probably. – joran May 18 '13 at 13:44
• Cool, that works too. I didn't know about summarise, thank you :) – Adrian May 18 '13 at 13:50

Use `tapply()` and `apply()` like this:

``````apply(
with(x, tapply(mean.length, list(year, distance), FUN=mean)),
1,
diff
)

2002       2003       2004       2005       2006
-0.8275344  1.2024322 -0.6239104  0.4514408  0.2818542
``````

This works because `tapply` creates a tabular summary by `year` and `distance`:

``````with(x, tapply(mean.length, list(year, distance), FUN=mean))

long      short
2002  0.54966989 -0.2778645
2003 -0.84160374  0.3608284
2004  0.03299794 -0.5909124
2005  0.52414971  0.9755906
2006 -1.72760411 -1.4457499
``````

Since you seem to have paired values and the data.frame is ordered, you can do this:

``````res <- with(DF, mean.length[distance=="long"]-mean.length[distance=="short"])
names(res) <- unique(DF\$year)

#     2002       2003       2004       2005       2006
#0.8275344 -1.2024322  0.6239104 -0.4514408 -0.2818542
``````

This should be quite fast, but not as safe as the other answers as it relies on the assumptions.

You've received some good answers for computing the specific question at hand. It may make sense for you to consider reshaping your data into a wide format. Here are two options:

``````reshape(df, direction = "wide", idvar = "year", timevar = "distance")
#---
year mean.length.long mean.length.short
1 2002       0.54966989        -0.2778645
2 2003      -0.84160374         0.3608284
3 2004       0.03299794        -0.5909124
4 2005       0.52414971         0.9755906
5 2006      -1.72760411        -1.4457499

#package reshape2 is probably easier to use.
library(reshape2)
dcast(year ~ distance, data = df)
#---
year        long      short
1 2002  0.54966989 -0.2778645
2 2003 -0.84160374  0.3608284
3 2004  0.03299794 -0.5909124
4 2005  0.52414971  0.9755906
5 2006 -1.72760411 -1.4457499
``````

You can easily compute your new statistics now.