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I have a dataset which consist of date_time, account (both are character) and amount (numeric) as below:

sample data:
    date_time <- as.character(c('2018-01-22 18:18:00','2018-01-22 18:18:05','2018-01-22 18:18:19','2018-01-22 18:18:00','2018-01-22 18:30:12','2018-01-22 18:18:11'))
    account <- as.character(c('a0001','a0001','a0001','b0001','b0001','c0001'))
    amount <- c(1000,200,300,10000,400,10000)
    df.sample <- data.frame(date_time, account, amount)

I would like to return TRUE if for transaction such that aggregate count >= 2 AND aggregate amount >= 12000 within 1 mins for each account, FALSE otherwise.

I wrote a function using dplyr as below:

simulation <- function(df, v.acct, v.date.time) {

  # v.acct <- '5408044133161021'
  # v.date.time <- as.POSIXct('2018-01-22 18:18:11')
  #time.interval <- 120

  #subset
  df2 <- df %>% 
          mutate(date.time=as.POSIXct(date_time),
                 diff.time=difftime(v.date.time, date.time, units=c('mins'))) %>%
          filter(account %in% v.acct,  diff.time <= time.interval, diff.time > 0) 

  df.summary <- df2 %>% 
                  group_by(account) %>%
                  summarise(agg.cnt=n(),
                            agg.amt=sum(amount))

  nrow <- df.summary %>% filter(agg.cnt>=agg.count, agg.amt>=agg.amount) %>% nrow()

  result <- ifelse(nrow==0, FALSE, TRUE)

  return(result)

}

And vector will be return which contain TRUE or FALSE :

time.interval <- 10
agg.count <- 10
agg.amount <- 20000
v.result <- apply(df[,c(1,2)],1,function(x) simulation(x[2],x[1]))

Issue: Above code able to return the result, while if the dataset become over 90,000 observation the computation time will be very long. Is there any alternative method? Thanks

1

Assuming that OP does not mind a data.table solution, you can use a non-equi self-join to find instances that falls within 1min of each transactions (by=.EACHI tells data.table to perform the join for each row of data in i=df. See ?data.table to see what i and .EACHI mean).

Then check if the count is greater than or equal to agg.count and if total amount is greater than or equal to agg.amount

data:

date_time <- as.character(c('2018-01-22 18:18:00','2018-01-22 18:18:05','2018-01-22 18:18:19','2018-01-22 18:18:00','2018-01-22 18:30:12','2018-01-22 18:18:11'))
account <- c('a0001','a0001','a0001','b0001','b0001','c0001')
amount <- c(1000,200,300,10000,400,10000)
df <- data.frame(date_time, account, amount)

time.interval <- 60
agg.count <- 10
agg.amount <- 20000

code:

library(data.table)
setDT(df)
df[, date_time := as.POSIXct(date_time, format="%Y-%m-%d %H:%M:%S")]
df[, oneMinLater := date_time + time.interval]
df[, hit :=
    df[df, 
    .N >= agg.count & sum(amount, na.rm=TRUE) >= agg.amount,
    by=.EACHI, 
    on=.(account, date_time > date_time, date_time <= oneMinLater)]$V1
]

output:

             date_time account amount         oneMinLater   hit
1: 2018-01-22 18:18:00   a0001   1000 2018-01-22 18:19:00 FALSE
2: 2018-01-22 18:18:05   a0001    200 2018-01-22 18:19:05 FALSE
3: 2018-01-22 18:18:19   a0001    300 2018-01-22 18:19:19 FALSE
4: 2018-01-22 18:18:00   b0001  10000 2018-01-22 18:19:00 FALSE
5: 2018-01-22 18:30:12   b0001    400 2018-01-22 18:31:12 FALSE
6: 2018-01-22 18:18:11   c0001  10000 2018-01-22 18:19:11 FALSE
  • Thanks for your prompt reply @chinsoon12. what if i would like to name the new column V1 as hit? how can i achieve that? – useR Jun 25 '18 at 9:37
  • or append the v.result as column in df with name "hit" – useR Jun 25 '18 at 9:40
  • Thanks! @chinsoon first time know by=.EACHI. i always feel data.table is quite complicated compare to dplyr for readability. – useR Jun 25 '18 at 9:44
  • there is another question such that if i would like to calculate the aggregate count and aggregate amount with the condition hit==FALSE. how can i achieve that? – useR Jun 26 '18 at 3:48
  • Do you mean another aggregate of the above output? – chinsoon12 Jun 26 '18 at 10:07
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This may be a possible solution:

   library(data.table)
    library(lubridate)
    library(zoo)
    setDT(df)
    df[, date.time := as.POSIXct(date_time, format="%Y-%m-%d %H:%M:%S")]
    df[, time.diff := difftime(date.time,min(date.time), units='mins')+0.0001, by=account]
    df[, interval := ceiling(time.diff / dminutes(time.interval)), by=account]
    df[, agg.cnt:=seq_len(.N), by=.(account, interval)]
    df[, agg.amt2:=cumsum(amount), by=.(account, interval)]

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