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I have data grouped by an id variable with multiple, unique observations per quarter and with different group sizes per id:

    library(dplyr)
    library(data.table)
    library(lubridate)

v2 <- sample(1:100, 15)
df <- data.frame(qy = c(rep('2016-01-01', 5), rep('2016-04-01', 5), rep('2016-10-01', 5)),
                 id = c(rep(c('a','a','b','b','c'), 3)),
                 value_t = c(0,0,1,1,0,1,1,0,0,0,0,0,1,1,1),
                 value2_t = c(v2))
df$qy <- ymd(df$qy)
df <- df %>% arrange(id, qy)
> df
   qy          id      value_t value2_t
1  2016-01-01  a       0       49
2  2016-01-01  a       0        4
3  2016-01-01  b       1        5
4  2016-01-01  b       1       48
5  2016-01-01  c       0       32
6  2016-04-01  a       1       81
7  2016-04-01  a       1        6
8  2016-04-01  b       0       71
9  2016-04-01  b       0       47
10 2016-04-01  c       0       78
11 2016-10-01  a       0       31
12 2016-10-01  a       0       10
13 2016-10-01  b       1       37
14 2016-10-01  b       1       63
15 2016-10-01  c       1       36

I attempt to create two lag variables grouped by id with lags of t-1 and t-2, respectively:

setDT(df)[order(qy), paste0('value_t', 1:2) := shift(value_t, 1:2) , by = id]

Although I've grouped by id, the lags don't follow the grouping assignment - the lag variables are just rolling lags within the group:

> df
   qy          id      value_t value2_t value_t1 value_t2
1: 2016-01-01  a       0       49       NA       NA
2: 2016-01-01  a       0        4        0       NA
3: 2016-04-01  a       1       81        0        0
4: 2016-04-01  a       1        6        1        0
5: 2016-10-01  a       0       31        1        1
6: 2016-10-01  a       0       10        0        1
7: 2016-01-01  b       1        5       NA       NA
8: 2016-01-01  b       1       48        1       NA
9: 2016-04-01  b       0       71        1        1
10: 2016-04-01  b       0       47        0        1
11: 2016-10-01  b       1       37        0        0
12: 2016-10-01  b       1       63        1        0
13: 2016-01-01  c       0       32       NA       NA
14: 2016-04-01  c       0       78        0       NA
15: 2016-10-01  c       1       36        0        0

I would like the lag variables to respect the grouping despite there being multiple observations per quarter as follows:

> df
   qy          id      value_t value2_t value_t1 value_t2
1  2016-01-01  a       0       49       NA       NA
2  2016-01-01  a       0        4       NA       NA
3  2016-04-01  a       1       81        0       NA
4  2016-04-01  a       1        6        0       NA
5  2016-10-01  a       0       31        1        0
6  2016-10-01  a       0       10        1        0
7  2016-01-01  b       1        5       NA       NA
8  2016-01-01  b       1       48       NA       NA
9  2016-04-01  b       0       71        1       NA
10 2016-04-01  b       0       47        1       NA
11 2016-10-01  b       1       37        0        1
12 2016-10-01  b       1       63        0        1
13 2016-01-01  c       0       32       NA       NA
14 2016-04-01  c       0       78        0       NA
15 2016-10-01  c       1       36        0        0

Any suggestions in data.table or dplyr in particular would be greatly appreciated!

Update: Thanks all for your comments. I believe David A. is correct in that the main issue is the varied id group size, and I've updated the question to highlight this.

  • The result you posted looks correct to me. You can see it resets with NA when the id changes to b which is expected. The expected result you posted looks like you might want a 2 and 4 lag instead? – Mike H. Apr 20 '18 at 13:27
  • 2
    Just doing by=id won't help you as you are trying to do a rolling shift with different group sizes per each id. You should really rephrase your question in a way that we won't need to read your mind. – David Arenburg Apr 20 '18 at 14:21
  • @DavidA It's just poorly arranged data. The should have a table like unique(df), where the shift makes more sense. mDT = unique(setDT(df))[, c("v1", "v2") := shift(value_t, 1:2), by=.(id)][]; df[mDT, on=.(qy, id), c("v1", "v2") := .(i.v1, i.v2)] or something – Frank Apr 20 '18 at 14:39
  • Thanks all for your comments. I've added the column value2_t that has unique values within (id, qy) pairings. This is why I have multiple observations per quarter-year. Apologies that the previous data was confusing - I was trying to make things more clear by excluding this column, but that was obviously not the result. – kathystehl Apr 20 '18 at 14:55
  • Thanks @DavidArenburg - I've updated the question to reflect your comment. Please let me know if the question is still unclear. – kathystehl Apr 20 '18 at 15:03
2

We can create a subset of data frame based on unique qy and id, create the lag columns value_t1 and value_t2, and then merge back to the original data frame.

library(dplyr)
library(data.table)
library(lubridate)

# Create example data frame
set.seed(123)

v2 <- sample(1:100, 15)
df <- data.frame(qy = c(rep('2016-01-01', 5), rep('2016-04-01', 5), rep('2016-10-01', 5)),
                 id = c(rep(c('a','a','b','b','c'), 3)),
                 value_t = c(0,0,1,1,0,1,1,0,0,0,0,0,1,1,1),
                 value2_t = c(v2))
df$qy <- ymd(df$qy)
df <- df %>% arrange(id, qy)

# Process the data
df2 <- df %>%
  distinct(id, qy, .keep_all = TRUE) %>%
  group_by(id) %>%
  mutate(value_t1 = lag(value_t, n = 1L),
         value_t2 = lag(value_t, n = 2L)) %>%
  select(-value_t, -value2_t) %>%
  ungroup() %>%
  left_join(df, ., by = c("qy", "id")) 

df2
#            qy id value_t value2_t value_t1 value_t2
# 1  2016-01-01  a       0       29       NA       NA
# 2  2016-01-01  a       0       79       NA       NA
# 3  2016-04-01  a       1        5        0       NA
# 4  2016-04-01  a       1       50        0       NA
# 5  2016-10-01  a       0       87        1        0
# 6  2016-10-01  a       0       98        1        0
# 7  2016-01-01  b       1       41       NA       NA
# 8  2016-01-01  b       1       86       NA       NA
# 9  2016-04-01  b       0       83        1       NA
# 10 2016-04-01  b       0       51        1       NA
# 11 2016-10-01  b       1       60        0        1
# 12 2016-10-01  b       1       94        0        1
# 13 2016-01-01  c       0       91       NA       NA
# 14 2016-04-01  c       0       42        0       NA
# 15 2016-10-01  c       1        9        0        0
  • This doesn't match the desired output – David Arenburg Apr 20 '18 at 14:15
  • Thanks @www for your suggestion. I've tried this fix as well, but the main issue is that there can be different observation counts per (id, qy), and I'm not sure how to account for this. There should only be one value_t value within each (id, qy), so I thought grouping by id would apply to the whole (id, qy) and this would be sufficient, – kathystehl Apr 20 '18 at 15:08
  • @DavidArenburg Thanks for pointing that out. I did not fully understand what the OP means. Please see my update to see if this makes sense. – www Apr 20 '18 at 15:33
  • @kathystehl I have provided an update to my post. In the future, if you want to create an example data frame with random sampling, please add set.seed to ensure the reproducibility. – www Apr 20 '18 at 15:34
  • Thanks for your answer @www ! This worked really well, and also thanks for your note on set.seed. Will be sure to do so in the future. – kathystehl Apr 23 '18 at 0:31
2

You can write your own time_lag function using rle (Run Length Encoding) and apply it to the columns:

library(dplyr)

time_lag = function(x, time_var, k = 1){

  shift_N = sum(rle(as.character(time_var))$lengths[0:k])

  return(c(rep(NA, shift_N), x[0:(length(x)-shift_N)]))
}

df %>%
  group_by(id) %>%
  mutate(value_t1 = time_lag(value_t, qy),
         value_t2 = time_lag(value_t, qy, 2),
         value_t3 = time_lag(value_t, qy, 3))

Result:

# A tibble: 15 x 7
# Groups:   id [3]
           qy     id value_t value2_t value_t1 value_t2 value_t3
       <date> <fctr>   <dbl>    <int>    <dbl>    <dbl>    <dbl>
 1 2016-01-01      a       0        7       NA       NA       NA
 2 2016-01-01      a       0       25       NA       NA       NA
 3 2016-04-01      a       1      100        0       NA       NA
 4 2016-04-01      a       1       20        0       NA       NA
 5 2016-10-01      a       0        1        1        0       NA
 6 2016-10-01      a       0       59        1        0       NA
 7 2016-01-01      b       1       76       NA       NA       NA
 8 2016-01-01      b       1       73       NA       NA       NA
 9 2016-04-01      b       0       69        1       NA       NA
10 2016-04-01      b       0       86        1       NA       NA
11 2016-10-01      b       1       85        0        1       NA
12 2016-10-01      b       1       40        0        1       NA
13 2016-01-01      c       0       49       NA       NA       NA
14 2016-04-01      c       0       82        0       NA       NA
15 2016-10-01      c       1       43        0        0       NA

Notes:

  • time_lag assumes that time_var is sorted and that k >= 0
  • time_lag first calculates the rle of time_var and add up the lengths of the first k unique time values. Let's call this sum shift_N
  • It then attaches shift_N NAs at the beginning and removes shift_N elements at the end of the vector x
  • rle requires an atomic vector as input, hence the as.character
  • When applied to dplyr::group_by, custom functions respects groupings, so there is no extra work needed there

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