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This is a really simple problem, but I cannot figure out how to script it. I cannot move forward until I figure it out. I'm really new to R and to programming, and I'm going through several introductory manuals, but haven't found anything for this specific problem yet.

Generally, here is the issue. Let's say I have a data frame called x that looks like:

a      b     c
1995    1     5
1995    2     7
1995    3     9
1996    1     2
1997    2     4
1997    3     5
1997    4     7
1998    1     8

There are multiple entries for some of the years in column a (i.e. 1995 appears 3 times), when really I just want one entry for each year. If I try to plot column a against column c, I will end up with multiple points for each date, but that is not helpful. I don't care about column b, but I want to sum entries for column c for each year, such that I end up with a data frame with one entry for each year. Given the above data, a resulting data frame would look like:

a        c
1995     21
1996      2
1997     16
1998      8

Any ideas? This would allow me to plot column a against column c and end up with a useful way of seeing how the # of c varies from year to year.

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Tip: avoid calling things c. Remember that c is a function for creating vectors. –  csgillespie Mar 5 '11 at 18:01
    
@csgillespie: That's true for objects. It's not as big an issue for column names. –  Joshua Ulrich Mar 5 '11 at 18:05
1  
@Joshua: True, but (some people) may be tempted to do c = df$c without thinking. –  csgillespie Mar 5 '11 at 18:07
2  
Having a c object in the global environment doesn't mask the c function in the base package, so it's not actually a problem. It could be confusing, though, so is best avoided, as @csgillespie suggests. –  Aaron Mar 5 '11 at 19:52

3 Answers 3

up vote 9 down vote accepted

The plyr library is useful for aggregation tasks such as these. plyr also plays very well with ggplot2 graphics. In my opinion, the benefit of plyr is that you explicitly define the structure of the input and output. Here we are passing in a data.frame object and also want a data.frame after processing, so we will use ddply. The first letter corresponds to the input object, and the second to the output. So if we wanted to go from a list object to data.frame, we'd use ldply, etc.

library(ggplot2) #Loads plyr

text <- "a b c
1995 1 5
1995 2 7
1995 3 9
1996 1 2
1997 2 4
1997 3 5
1997 4 7
1998 1 8
"

df <- read.table(textConnection(text), header = TRUE)

#Create plotData data.frame that groups by the "a" column and returns the sum of "c"
plotData <- ddply(df, "a", summarise, totalc = sum(c))

#plotting with ggplot
qplot(factor(a), totalc, data = plotData)
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2  
If I were a betting man, I would have put money on the plyr answer being accepted as the best. –  Joshua Ulrich Mar 5 '11 at 20:00
    
Along with the library(ggplot2) step, the second to last step in this answer--- plotData <- ddply(df, "a", summarise, totalc = sum(c)) ---is really the most useful, simple answer for solving my problem, as far as I can see. I ended up with the data frame I hoped for. As an interesting corollary, how might one go about doing this same thing (summing a column by a date) for something like 400 columns instead of a single one. Is there an efficient way? –  Frank Mar 7 '11 at 7:35

You need tapply. For example,

## Your data
c1 = c(1995, 1995, 1995, 1996, 1997,  1997, 1997, 1998) 
c2 = c(5, 7, 9, 2, 4, 5, 7, 8)
x = data.frame(c1, c2)


y = tapply(x$c2, x$c1, sum)
names(y) ## For the years
as.vector(y)

## So to get a data frame
data.frame(a=names(y), c=as.vector(y))
share|improve this answer
    
Nice answer, but you need another step to convert y into a data.frame with columns "a" and "c". –  Joshua Ulrich Mar 5 '11 at 19:19
    
@Joshua: I've added that step to the answer in case it wasn't clear. I can't really make my mind up about which answer I prefer - yours or mine. –  csgillespie Mar 5 '11 at 19:26
aggregate(x[,"c",drop=FALSE], by=x[,"a",drop=FALSE], sum)

The drop=FALSE is to ensure the object created by subsetting x is a data.frame. If you omit drop=FALSE the dimensions of the data.frame will dropped (because you're only accessing one column of the data.frame) and the result of subsetting will be a vector. See ?"[" and ?drop for more details.

UPDATE: I agree with Gavin that the formula interface is cleaner:

aggregate(c ~ a, data=x, sum)
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4  
wouldn't it be just be easier to use the formula interface in this case? aggregate(c ~ a, data = x, sum) Also, you only need the drop on the by version as this argument takes a list only, for example this works just fine also: aggregate(x[,"c2"], by = list(Year = x[,"c1"]), sum) –  Gavin Simpson Mar 5 '11 at 19:25
4  
@Gavin: very good point about the formula interface. The reason I used drop on the first argument is so the column name would persist through to the new object. –  Joshua Ulrich Mar 5 '11 at 20:01
1  
good retort - touché - hadn't noticed that the name was preserved if the first argument is a data frame. +1. –  Gavin Simpson Mar 5 '11 at 21:02

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