I'm relatively new to using R so apologies in advance if my question requires a very obvious answer! My work involves working with event logs and I am currently trying to subset clients based on their number of interactions with the service. Here's an illustrative example:-

Client ID               Event
7749-2388              hei856 
4553-9903              jje783 
3423-8850              iew456
3423-8850              msk111
4553-9903              hjl009 
4553-9903              kii906

So as you can see, client 4553-9903 had three different interactions with the service, client 3423-8850 had two different interactions with the service and finally client 7749-2388 only had one interaction. My aim is to subset the clients based on the amount of interactions with the service, so those clients with N interactions are in one data.frame each. My issue is that the data.frame I am working with has 150,000 rows of different interactions, which equates to around 50,000 unique clients, so it is not really feasible to manually type in each individual client ID like so:

subset(df, Client ID=="4553-9903")

Is there a way to subset my data so that all clients who had, for example, 3 interactions with the service are in one data.frame, and so on?. I hope my problem isn't too hard to understand and any help I can get would be really appreciated, thanks!!

  • Creating all these data frames sounds like it will get messy fast. Why not add a column that contains number of interactions (e.g., df %<>% group_by(Client.ID) %>% mutate(interactions = n()) %>% ungroup) and then just filter when you want to look at a specific number of interactions (e.g., df %>% filter(interactions == 3))? This way you keep everything in a single data frame. – Lyngbakr Aug 14 '18 at 12:11
  • Thank you @Lyngbakr!. I think this worked a treat!! – Robin Turkington Aug 14 '18 at 13:15

I recommend storing the data subsets in a list (you will have the full *apply/purrr::*map family of methods at your disposal to operate on the list element).

Here is a tidyverse option

df %>%
    group_by(Client.ID) %>%
    mutate(n = n()) %>%
    split(., .$n) %>%
    map(~.x[, 1:2])
## A tibble: 1 x 2
## Groups:   Client.ID [1]
#  Client.ID Event
#  <fct>     <fct>
#1 7749-2388 hei856
## A tibble: 2 x 2
## Groups:   Client.ID [1]
#  Client.ID Event
#  <fct>     <fct>
#1 3423-8850 iew456
#2 3423-8850 msk111
## A tibble: 3 x 2
## Groups:   Client.ID [1]
#  Client.ID Event
#  <fct>     <fct>
#1 4553-9903 jje783
#2 4553-9903 hjl009
#3 4553-9903 kii906

Explanation: We group entries by Client.ID, count the number of entries per Client.ID and split the data into subsets based on that count. The names of the list entries correspond to the multiplicity of the Client.IDs.

Perhaps alternatively I might make sense to split data by Client.ID instead of by Client.ID multiplicity, and then operate on the corresponding the list.

Sample data

df <- read.table(text =
    "'Client ID'               Event
 7749-2388              hei856
 4553-9903              jje783
 3423-8850              iew456
 3423-8850              msk111
 4553-9903              hjl009
 4553-9903              kii906", header = T)
  • Thank you very much! This actually worked quite well also!! – Robin Turkington Aug 14 '18 at 13:16

A simple solution will be

df2<- read.csv("stack_frequency_multi_df.csv",stringsAsFactors = F) #your data
df2$frequency<- as.numeric(ave(df2$client_id,df2$client_id,FUN = length)) ##this will create frequency based on client id 

out <- split( df2 , f = df2$frequency) ##based on the frequency of the client id it will create multiple lists.
list2env(out,envir=.GlobalEnv) ##this will create data frame from all the lists created above 
#below function will save every list as a CSV file which will make your work easier 
Map(write.csv,out,filenames,row.names = F)

I hope It helps

  • Thank you very much!!! Tried this and it also worked! – Robin Turkington Aug 14 '18 at 13:17

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