6

This question already has an answer here:

I have a dataset that looks something like this:

 Type Age   count1  count2  Year   Pop1   Pop2  TypeDescrip
  A   35    1        1      1990   30000  50000  alpha                                 
  A   35    3        1      1990   30000  50000  alpha 
  A   45    2        3      1990   20000  70000  alpha 
  B   45    2        1      1990   20000  70000  beta
  B   45    4        5      1990   20000  70000  beta 

I want to add the counts of the rows that are matching in the Type and Age columns. So ideally I would end up with a dataset that looks like this:

 Type  Age  count1  count2  Year   Pop1   Pop2  TypeDescrip 
  A   35    4        2      1990   30000  50000  alpha 
  A   45    2        3      1990   20000  70000  alpha 
  B   45    6        6      1990   20000  70000  beta 

I've tried using nested duplicated() statements such as below:

typedup = duplicated(df$Type)
bothdup = duplicated(df[(typedup == TRUE),]$Age)

but this returns indices for which age or type are duplicated, not necessarily when one row has duplicates of both.

I've also tried tapply:

tapply(c(df$count1, df$count2), c(df$Age, df$Type), sum)

but this output is difficult to work with. I want to have a data.frame when I'm done.

I don't want to use a for-loop because my dataset is quite large.

marked as duplicate by Frank, user20650, akrun r Jul 2 '15 at 19:55

This question has been asked before and already has an answer. If those answers do not fully address your question, please ask a new question.

  • 1
    If you have many columns to group by and sum, see stackoverflow.com/questions/30669817/… – Sam Firke Jul 2 '15 at 18:00
  • @Frank I thought there must be a duplicate of this question - but I didn't find any perfect matches. This question has two grouping variables which makes it different from the one you linked. – Sam Firke Jul 2 '15 at 18:06
  • @SamFirke Not different enough for my tastes :) The important difference, anyway, is not the two grouping variables, but the two columns being summed. If there were only one, the OP's tapply would almost "work" (in the sense of at least giving the right numbers, though not in a data.frame). – Frank Jul 2 '15 at 18:08
  • I think your TypeDescrip would be beta for the 2nd row in the expected output. Try df2 %>% group_by(Type, Age,Pop1, Pop2, TypeDescrip) %>% summarise_each(funs(sum), matches('^count')) – akrun Jul 2 '15 at 20:04
8

Try

library(dplyr)
df1 %>%
     group_by(Type, Age) %>% 
     summarise_each(funs(sum))
#    Type Age count1 count2
#1    A  35      4      2
#2    A  45      2      3
#3    B  45      6      6

Or using base R

 aggregate(.~Type+Age, df1, FUN=sum)
 #    Type Age count1 count2
 #1    A  35      4      2
 #2    A  45      2      3
 #3    B  45      6      6

Or

library(data.table)
setDT(df1)[, lapply(.SD, sum), .(Type, Age)] 
#   Type Age count1 count2
#1:    A  35      4      2
#2:    A  45      2      3
#3:    B  45      6      6

Update

Based on the new dataset,

 df2 %>%
     group_by(Type, Age,Pop1, Pop2, TypeDescrip) %>% 
     summarise_each(funs(sum), matches('^count'))
 #    Type Age  Pop1  Pop2 TypeDescrip count1 count2
 #1    A  35 30000 50000       alpha      4      2
 #2    A  45 20000 70000        beta      2      3
 #3    B  45 20000 70000        beta      6      6

data

 df1 <- structure(list(Type = c("A", "A", "A", "B", "B"), Age = c(35L, 
 35L, 45L, 45L, 45L), count1 = c(1L, 3L, 2L, 2L, 4L), count2 = c(1L, 
 1L, 3L, 1L, 5L)), .Names = c("Type", "Age", "count1", "count2"
 ), class = "data.frame", row.names = c(NA, -5L))

 df2 <- structure(list(Type = c("A", "A", "A", "B", "B"), Age = c(35L, 
 35L, 45L, 45L, 45L), count1 = c(1L, 3L, 2L, 2L, 4L), count2 = c(1L, 
 1L, 3L, 1L, 5L), Year = c(1990L, 1990L, 1990L, 1990L, 1990L), 
   Pop1 = c(30000L, 30000L, 20000L, 20000L, 20000L), Pop2 = c(50000L, 
   50000L, 70000L, 70000L, 70000L), TypeDescrip = c("alpha", 
   "alpha", "beta", "beta", "beta")), .Names = c("Type", "Age", 
  "count1", "count2", "Year", "Pop1", "Pop2", "TypeDescrip"),
   class =   "data.frame", row.names = c(NA, -5L))
  • 1
    I like the group_by solution you provided, but is there a way to include more columns in the output? my dataset is wider than the example I gave in my original post. – heo Jul 2 '15 at 19:48
  • 1
    @Hannah Can you update your post with an example that mimics your original data? I guess you have columns other than the one you wanted to get the sum. But, if you you want to keep those columns in the summary, which values would you select. i.e. the last one, first one etc.. – akrun Jul 2 '15 at 19:51
  • 1
    @Hannah Updated the post with the new data – akrun Jul 2 '15 at 20:06
1

@hannah you can also use sql using the sqldf package

sqldf("select 
Type,Age,
sum(count1) as sum_count1, 
sum(count2) as sum_count2 
from 
 df 
group by 
Type,Age
")

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