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Say I had the following table DataTable

Cat1    |   Cat2    |   Val1    |   Val2
--------------------------------------------
A       |   A       |   1       |   2
A       |   B       |   3       |   4
B       |   A       |   5       |   6
B       |   B       |   7       |   8
A       |   A       |   2       |   4
A       |   B       |   6       |   8
B       |   A       |   10      |   12
B       |   B       |   14      |   16

Which I wanted to Aggregate by Cat1 and Cat2, taking the Sum and Avg of Val1 and Val2 respectively, how might I acheive this?

Cat1    |   Cat2    | Sum Val1  | Avg Val2
--------------------------------------------
A       |   A       |   3       |   3
A       |   B       |   9       |   6
B       |   A       |   15      |   9
B       |   B       |   21      |   12

I've achieved single variable aggregation with the aggregate function:

aggregate(
        Val1
    ~   Cat1 + Cat2
    data=DataTable,
    FUNC=sum
)

but despite playing around with cbind, can't get the behaviour I want. I'm 24 hrs into learning R, so I'm not familiar enough with the concepts to fully understand what I've been doing (always dangerous!) but think this must be simple to achieve. |

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2 Answers 2

up vote 7 down vote accepted
set.seed(45)
df <- data.frame(c1=rep(c("A","A","B","B"), 2), 
                 c2 = rep(c("A","B"), 4), 
                 v1 = sample(8), 
                 v2 = sample(1:100, 8))
> df
#   c1 c2 v1 v2
# 1  A  A  6 19
# 2  A  B  3  1
# 3  B  A  2 37
# 4  B  B  8 86
# 5  A  A  5 30
# 6  A  B  1 44
# 7  B  A  7 41
# 8  B  B  4 39

v1 <- aggregate( v1 ~ c1 + c2, data = df, sum)
v2 <- aggregate( v2 ~ c1 + c2, data = df, mean)
out <- merge(v1, v2, by=c("c1","c2"))
> out
#   c1 c2 v1   v2
# 1  A  A 11 24.5
# 2  A  B  4 22.5
# 3  B  A  9 39.0
# 4  B  B 12 62.5

**Edit:** I'd propose that you use data.table as it makes things really easy:

require(data.table)
dt <- data.table(df)
dt.out <- dt[, list(s.v1=sum(v1), m.v2=mean(v2)), 
                  by=c("c1","c2")]
> dt.out

#    c1 c2 s.v1 m.v2
# 1:  A  A   11 24.5
# 2:  A  B    4 22.5
# 3:  B  A    9 39.0
# 4:  B  B   12 62.5
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1  
I think data.table is the way to go, but it seems like the OP doesn't want sum and mean for each variable (in case you felt like updating your answer). –  Ananda Mahto Jan 23 '13 at 11:09

Here's a base R solution:

First, your data:

x <- structure(list(Cat1 = structure(c(1L, 1L, 2L, 2L, 1L, 1L, 2L, 
2L), .Label = c("A", "B"), class = "factor"), Cat2 = structure(c(1L, 
2L, 1L, 2L, 1L, 2L, 1L, 2L), .Label = c("A", "B"), class = "factor"), 
    Val1 = c(1L, 3L, 5L, 7L, 2L, 6L, 10L, 14L), Val2 = c(2L, 
    4L, 6L, 8L, 4L, 8L, 12L, 16L)), .Names = c("Cat1", "Cat2", 
"Val1", "Val2"), class = "data.frame", row.names = c(NA, -8L))

Then, use ave() and unique() within within().

unique(
  within(x, {
    sum_val1 <- ave(Val1, Cat1, Cat2, FUN = sum)
    mean_val2 <- ave(Val2, Cat1, Cat2, FUN = mean)
    rm(Val1, Val2)
  })
)
#   Cat1 Cat2 mean_val2 sum_val1
# 1    A    A         3        3
# 2    A    B         6        9
# 3    B    A         9       15
# 4    B    B        12       21

Or, if you're comfortable with SQL, use sqldf:

library(sqldf)
sqldf("select Cat1, Cat2, 
      sum(Val1) `Sum_Val1`, 
      avg(Val2) `Avg_Val2` 
      from x group by Cat1, Cat2")
share|improve this answer
    
Thanks for the options. I like the option provided by the other poster to use data.table as it feels a bit more R. Familiarity of sql is appealing though. I notice the use of avg function. Can R functions (eg median) be called from within the sql syntax? –  user524261 Jan 23 '13 at 12:29
1  
@user524261, not sure how data.table is more R than ave, but that's cool. As for your question about calling R functions in SQL: no, you'd have to use the appropriate SQL command (for example, here we called avg instead of mean) and things like "median" (to my knowledge) aren't available directly with SQL but can be determined using "order by", "length" and other familiar commands. –  Ananda Mahto Jan 25 '13 at 6:33

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