0

I'm looking for an R-package to group consecutive dates into periods. In addition, columns must be grouped by FID, PID and SETTING:

# Input data
input <- read.csv(text=
    "FID,PID,SETTING,DATE
    00001, 100001, ST, 2021-01-01
    00001, 100001, ST, 2021-01-02
    00001, 100001, ST, 2021-01-03
    00001, 100002, AB, 2021-01-04
    00001, 100001, ST, 2021-01-11
    00001, 100001, ST, 2021-01-12
    00002, 200001, AB, 2021-01-02
    00002, 200001, AB, 2021-01-03
    00002, 200001, AB, 2021-01-04
    00002, 200002, TK, 2021-01-05"
)

# Expected output
output <- read.csv(text="
    FID,PID,SETTING,START,END
    00001, 100001, ST, 2021-01-01, 2021-01-03
    00001, 100002, AB, 2021-01-04, 2021-01-04
    00001, 100001, ST, 2021-01-11, 2021-01-12
    00002, 200001, AB, 2021-01-02, 2021-01-04
    00002, 200002, TK, 2021-01-05, 2021-01-05"
)

I 've to group around 700'000 lines. Therefore, the solution should be as performant as possible.

3
  • 1
    This might help get you started: stackoverflow.com/questions/51385638/…
    – Skaqqs
    Oct 22, 2021 at 11:38
  • FYI, your request "looking for an R-package" is by its nature off-topic because it is "asking us to recommend or find a book, tool, software library". However, without that this is effectively asking us to summarize data by group, which is both a valid question and a frequent question. With that in mind, it is a duplicate (summarize-by-group) and should likely be closed as such. I answered anyway; despite being a dupe, you can still accept it if it meets your needs.
    – r2evans
    Oct 22, 2021 at 12:04
  • 1
    The collapse package has seqid for this: as.numeric(seqid(as.Date(input$DATE)))) Now group by that and the other grouping variables. Oct 22, 2021 at 12:48

1 Answer 1

3

base R

input <- input[order(input$DATE),]
input$grp <- ave(as.integer(input$DATE), input[-4], FUN = function(z) cumsum(c(TRUE, diff(z) > 1)))
input
#    FID    PID SETTING       DATE grp
# 1    1 100001      ST 2021-01-01   1
# 2    1 100001      ST 2021-01-02   1
# 7    2 200001      AB 2021-01-02   1
# 3    1 100001      ST 2021-01-03   1
# 8    2 200001      AB 2021-01-03   1
# 4    1 100002      AB 2021-01-04   1
# 9    2 200001      AB 2021-01-04   1
# 10   2 200002      TK 2021-01-05   1
# 5    1 100001      ST 2021-01-11   1
# 6    1 100001      ST 2021-01-12   1

out <- aggregate(DATE ~ FID + PID + SETTING + grp, data = input,
                 FUN = function(z) setNames(range(z), c("START","END")))
out <- do.call(data.frame, out)
out[,5:6] <- lapply(out[,5:6], as.Date, origin = "1970-01-01")
out
#   FID    PID SETTING grp DATE.START   DATE.END
# 1   1 100002      AB   1 2021-01-04 2021-01-04
# 2   2 200001      AB   1 2021-01-02 2021-01-04
# 3   1 100001      ST   1 2021-01-01 2021-01-03
# 4   2 200002      TK   1 2021-01-05 2021-01-05
# 5   1 100001      ST   2 2021-01-11 2021-01-12

Walk-through:

  • the ease of cumsum and diff is accomplished assuming that the dates are always ordered; it is not important (here) that the other grouping variables may be misordered;
  • ave(..) assigns groups of non-consecutive (diff over 1) dates, which we use in the next step;
  • aggregate calculates the range within each group, using your three variables plus our new grp grouping variable; each z in the anonymous function is a contiguous vector of dates, so range gives us that start/end dates;
  • unfortunately, aggregate is assigning a matrix as the fifth column instead of two separate columns, so do.call(data.frame, out) fixes that;
  • unfortunately, most base R aggregating functions tend to strip the Date (and POSIXt) class from the vectors, so we need to use as.Date to heal that.

dplyr

library(dplyr)
input %>%
  arrange(DATE) %>%
  group_by(FID, PID, SETTING) %>%
  mutate(grp = cumsum(c(TRUE, diff(DATE) > 1))) %>%
  group_by(FID, PID, SETTING, grp) %>%
  summarize(START = min(DATE), END = max(DATE)) %>%
  ungroup()
# # A tibble: 5 x 6
#     FID    PID SETTING   grp START      END       
#   <int>  <int> <chr>   <int> <date>     <date>    
# 1     1 100001 " ST"       1 2021-01-01 2021-01-03
# 2     1 100001 " ST"       2 2021-01-11 2021-01-12
# 3     1 100002 " AB"       1 2021-01-04 2021-01-04
# 4     2 200001 " AB"       1 2021-01-02 2021-01-04
# 5     2 200002 " TK"       1 2021-01-05 2021-01-05

data.table

library(data.table)
inputDT <- as.data.table(input)
setorder(inputDT, DATE)
inputDT[, grp := cumsum(c(TRUE, diff(DATE) > 1)), by = .(FID, PID, SETTING)
  ][, .(START = min(DATE), END = max(DATE)), by = .(FID, PID, SETTING, grp)
  ][]
#      FID    PID SETTING   grp      START        END
#    <int>  <int>  <char> <int>     <Date>     <Date>
# 1:     1 100001      ST     1 2021-01-01 2021-01-03
# 2:     2 200001      AB     1 2021-01-02 2021-01-04
# 3:     1 100002      AB     1 2021-01-04 2021-01-04
# 4:     2 200002      TK     1 2021-01-05 2021-01-05
# 5:     1 100001      ST     2 2021-01-11 2021-01-12

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

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