0

and thanks in advance for looking.

I have a data frame of Events(EV):

Event_ID | Person_ID | Start_Period | End_Period | Event_Type
------------------------------------------------------------
A        | Person1   | 1            | 9          | Assessment
B        | Person1   | 2            | 9          | Activity
C        | Person1   | 3            | 6          | Assessment
D        | Person2   | 3            | 6          | Activity
E        | Person3   | 7            | 13         | Assessment

And I have a data frame of Person-Periods (PP)

Person_ID | Period
----------------------
Person1   | 1
Person1   | 2
Person1   | 3
Person2   | 1
Person2   | 2
Person2   | 3
Person3   | 1
Person3   | 2
Person3   | 3

I want to find out for each period, how many activities or assessments were on-going during the period. For example if an event for Person1 in EV had a start period of 5 and end period of 10, then this event should show up in 5,6,7,8,9,10 in PP. The result would look like this:

Person_ID | Period | ActivitiesFreq | AssessmentsFreq
----------------------------------------------
Person1   | 1      | 0              | 1
Person1   | 2      | 1              | 1
Person1   | 3      | 1              | 2
Person2   | 1      | 0              | 0
Person2   | 2      | 0              | 0
Person2   | 3      | 1              | 0
Person3   | 1      | 0              | 0
Person3   | 2      | 0              | 0
Person3   | 3      | 0              | 0

At the moment I'm using a for loop - which is slow.And I'm resisting a join because the full dataset has hundreds and thousands of data. I've tried using mutate from the dplyr package:

mutate(PP,SUM(EV$Person_ID==Person_ID,EV$Start_Period<=Period,EV$End_Period>=Period)

but I get the following error:

Warning messages:
1: In mutate_impl(.data, dots) :
  is.na() applied to non-(list or vector) of type 'NULL'
2: In mutate_impl(.data, dots) :
  longer object length is not a multiple of shorter object length
3: In mutate_impl(.data, dots) :
  longer object length is not a multiple of shorter object length

I'm open to using other packages - I think I don't quite understand something about the way mutate works

1
  • @Arun Apologies, original data truncated so should now be consistent. Thanks for looking!
    – user988029
    Jul 29, 2015 at 13:28

3 Answers 3

4

Here's a solution using data.table v1.9.5 (current devel version). I'm using it for the new on= feature that allows joins without having to set keys:

require(data.table) # v1.9.5+
ans = setDT(df2)[df1, .(Period, Event_Type, 
                        isBetween = Period %between% c(Start_Period, End_Period)), 
                by = .EACHI, on = "Person_ID", nomatch = 0L]

dcast(ans, Person_ID + Period ~ Event_Type, fun.aggregate = sum)
# Using 'isBetween' as value column. Use 'value.var' to override
#    Person_ID Period Activity Assessment
# 1:   Person1      1        0          1
# 2:   Person1      2        1          1
# 3:   Person1      3        1          2
# 4:   Person2      1        0          0
# 5:   Person2      2        0          0
# 6:   Person2      3        1          0
# 7:   Person3      1        0          0
# 8:   Person3      2        0          0
# 9:   Person3      3        0          0

How it works:

  • setDT() converts a data.frame to data.table in-place (by reference).

  • setDT(df2)[df1, on = "Person_ID"] performs a join operation on column Person_ID. For each row in df1, the corresponding matching rows in df2 are computed, and all columns corresponding to those matching rows are extracted.

  • setDT(df2)[df1, on = "Person_ID", nomatch = 0L], as you might have guessed only returns matching rows, and leaves out those rows of Person_ID in df1 where there is no match in df2.

  • The by = .EACHI part is quite useful and powerful argument. It helps to compute the expression we provide in j, the second argument within [], for each row in df1.

    For example, consider the 2nd row of df1. Joining on Person_ID, it matches with rows 1,2,3 of df2. And by = .EACHI will execute the expression provided within .(), which will return Period = 1,2,3, Event_Type = "Activity"and isBetween = FALSE,TRUE,TRUE. Event_Type is recycled to fit the length of the longest vector (= 3).

    Essentially, we are joining and computing at the same time. This is a feature (only?) in data.table, where joins are considered as extensions of subset operations. Since we can compute while subsetting and grouping, we can do exactly the same while joining as well. This is both fast and *memory efficient as the entire join doesn't have to be materialised.

    To understand it better, try computing what j expression will result in for the last row.

    Then, have a look at ans, and the result should be obvious.

  • Then we've one last step to do and that is to count the number of Activity and Assessment for each Person_ID, Period and have them as separate columns. This can be done in one step using dcast function.

    The formula implies that for each Person_ID, Period, we'd like to sum() the values of inBetween, as a separate column, for each unique value of Event_Type.

0

I haven't come up with a way to do this without joining datasets. Here is a dplyr-based solution using left_join to join the datasets first (I took only the three columns from EV needed for the task).

Once the dataset are joined, you can just group the dataset by Person_ID and calculate the cumulative sum of the two types of events. I threw in an arrange in case the real dataset wasn't in order by Period within Person_ID and removed the Event_Type column within mutate.

library(dplyr)
PP %>% 
    left_join(., select(EV, -Event_ID, -End_Period), by = c("Person_ID", "Period" = "Start_Period")) %>%
    group_by(Person_ID) %>%
    arrange(Period) %>%
    mutate(ActivitiesFreq = cumsum(Event_Type == "Activity" & !is.na(Event_Type)),
            AssessmentFreq = cumsum(Event_Type == "Assessment" & !is.na(Event_Type)),
            Event_Type = NULL)

Source: local data frame [9 x 4]
Groups: Person_ID

  Person_ID Period ActivitiesFreq AssessmentFreq
1   Person1      1              0              1
2   Person1      2              1              1
3   Person1      3              1              2
4   Person2      1              0              0
5   Person2      2              0              0
6   Person2      3              1              0
7   Person3      1              0              0
8   Person3      2              0              0
9   Person3      3              0              0
-1

Here is a potential solution:

  1. Left Join PP and EV (dplyr::left_join) on Person_ID and Period
  2. Group by Person and period dplyr::group_by(Person_ID , Period)
  3. Count the number of values using dplyr::summarise()
3
  • Thanks for your answer! I'm not sure how this would work for on-going activities. E.g. if an activity runs from period 5 to 10, it should show up in PP for person months 5,6,7,8,9,10.
    – user988029
    Jul 29, 2015 at 10:00
  • Thanks again for your solution! Is there another way that doesn't use a join? The table are of c. 200,000 rows each, giving a significant sized data frame that's going to be hard to handle. Thank you!
    – user988029
    Jul 29, 2015 at 12:50
  • Fyi, for steps 2&3 you can count with count or group_by+tally in a dplyr chain.
    – Frank
    Jul 29, 2015 at 14:18

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