I am trying to roll up a bunch of rows for one day into a single row. I would like it in dplyr if possible. I know that my code is far from correct, but this was how far I got:

data %>%
  group_by(DAY) %>%
  summarise_each(funs(Sum = n()), SEX, GROUP, TOTAL)

Original:

DAY SEX GROUP   TOTAL       
7/1/14  FEMALE  A   1       
7/1/14  FEMALE  B   1       
7/1/14  FEMALE  B   1       
7/1/14  FEMALE  A   1       
7/1/14  MALE    A   1       
7/1/14  MALE    B   2       

New:

DAY     FEMALE  MALE    GROUP_A GROUP_B TOTAL
7/1/14  4       2       3       3       7  
  • Well, at first glance, the easiest would be to write it out data %>% group_by(DAY) %>% summarise(FEMALE = sum(SEX == "FEMALE"), MALE = sum(SEX == "MALE"), GROUP_A = sum(GROUP == "A"), GROUP_B = sum(GROUP == "B"), TOTAL = sum(TOTAL)). But I guess you are striving for code elegance. :-) – lukeA Jul 17 '15 at 7:35
up vote 8 down vote accepted

Another way with data.table, tested on a data.frame with more than one day.

require(data.table)
setDT(data)[, as.list(c(table(SEX), table(GROUP), TOTAL=sum(TOTAL))), by=DAY]

#      DAY FEMALE MALE A B TOTAL
#1: 7/1/14      3    0 1 2     3
#2: 8/1/14      1    2 2 1     4

EDIT: another, less manual, option (you don't need to know which variables are factors and which are numeric), thanks to some help from @jangorecki and @DavidArenburg

wh_num <- sapply(data, is.numeric)[-1]
wh_fact <-sapply(data, is.factor)[-1]
setDT(data)[, as.list(c(lapply(.SD[, wh_fact, with = FALSE], table), 
                        lapply(.SD[, wh_num, with = FALSE], sum), 
                        recursive = TRUE)), by = DAY]

#      DAY SEX.FEMALE SEX.MALE GROUP.A GROUP.B TOTAL
#1: 7/1/14          3        0       1       2     3
#2: 8/1/14          1        2       2       1     4

data

data <- structure(list(DAY = c("7/1/14", "7/1/14", "7/1/14", "8/1/14", 
"8/1/14", "8/1/14"), SEX = structure(c(1L, 1L, 1L, 1L, 2L, 2L
), .Label = c("FEMALE", "MALE"), class = "factor"), GROUP = structure(c(1L, 
2L, 2L, 1L, 1L, 2L), .Label = c("A", "B"), class = "factor"), 
    TOTAL = c(1L, 1L, 1L, 1L, 1L, 2L)), .Names = c("DAY", "SEX", 
"GROUP", "TOTAL"), row.names = c(NA, -6L), class = "data.frame")

It may seem a little arcane, but here is a short incantation

dat %>% group_by(DAY) %>%
  summarise_each(funs(ifelse(is.numeric(.), sum(.), list(table(.))))) -> res

data.frame(DAY=res$DAY, t(unlist(res[, 2:ncol(res)])))
#      DAY SEX.FEMALE SEX.MALE GROUP.A GROUP.B TOTAL
# 1 7/1/14          4        2       3       3     7

Here, you simply summarise each column as a table if it's not numeric, or sum it if it is (for the total column). This needs to be returned as a list since summarise_each expects a single value. Then, the result is expanded to a regular data.frame.

  • 1
    I'm not sure it works correctly for several dates though. For example if you''ll change the last 3 dates to 8/1/14. – David Arenburg Jul 17 '15 at 8:30
  • @DavidArenburg yea, it's for the special case of a single row. You could make it work for more, something along the lines of unlist and rbind the rows together I guess. – jenesaisquoi Jul 17 '15 at 8:34
  • I doubt the @user2434624 has only one day in the original data... – Cath Jul 17 '15 at 8:41
  • 1
    if there are more than 1 day (which is very likely to happen), this will work to reformat the results : data.frame(DAY=res$DAY, t(apply(res[, 2:ncol(res)], 1, unlist))) – Cath Jul 17 '15 at 9:40
  • 1
    @CathG nice solution! thanks for the comment – jenesaisquoi Jul 17 '15 at 9:47

The way you calculate the total (sum) and the other columns (table) differ substantially, so you probably have to do these steps seperately. Calculating the total is easy. For the tabulation, I suggest using tidyr as follows:

# required packages
require(dplyr)
require(tidyr)

# calculations
data %>%
  group_by(DAY) %>%                     # group by day
  mutate(TOTAL = sum(TOTAL)) %>%        # first calculate total
  gather(key, value, -DAY, -TOTAL) %>%  # collapse
  unite(group, key, value) %>%          # get sensible column names
  group_by(DAY, TOTAL) %>%              # group by day and total
  do(as.data.frame(table(.$group))) %>% # table
  spread(Var1, Freq)                    # spread out

##      DAY TOTAL GROUP_A GROUP_B SEX_FEMALE SEX_MALE
## 1 7/1/14     7       3       3          4        2
  • 1
    I'm truly surprised you preferred this over complicated dplyr/tidyr solution over a simple data.table solution which you posted many times before. – David Arenburg Jul 17 '15 at 9:46
  • @DavidArenburg: I usually try to answer with the packages the OP seems to prefer. But I agree that in this case the data.table solution is preferable (and I have upvoted it). – shadow Jul 17 '15 at 9:53

One possible approach:

library(reshape2)
library(data.table)

cbind(dcast(df, DAY~SEX), 
      dcast(df, DAY~GROUP)[-1], 
      setDT(df)[,.(total=sum(TOTAL)),DAY][,-1,with=F])

#     DAY FEMALE MALE A B total
#1 7/1/14      4    2 3 3     7

Your Answer

 

By clicking "Post Your Answer", you acknowledge that you have read our updated terms of service, privacy policy and cookie policy, and that your continued use of the website is subject to these policies.

Not the answer you're looking for? Browse other questions tagged or ask your own question.