# Calculating unique masons by grouping consequent last months in a dataset

I have a dataset with columns:

``````set.seed(123)
df <- data.frame(Mason_Id = sample(c("Mason1", "Mason2","Mason3","Mason4","Mason5","Mason6"), 12, T),
Registration_Date = c("01-08-2020", "01-08-2020","05-08-2020","07-08-2020",
"02-09-2020", "02-09-2020","02-09-2020",
"03-09-2020","04-09-2020","01-10-2020","02-10-2020",
"06-10-2020"),
Token_Count = runif(12, 10, 100), stringsAsFactors = F)

#calculate last day of every month
library(lubridate)
df\$month_end_date=paste(format(df\$Registration_Date, format="%m-%Y"),"-", days_in_month(df\$Registration_Date), sep="")

``````

I need to find the unique number of masons in the last 3 months starting October and moving backwards, in the following format:

``````Registration_Date | Unique_Masons
31-10-2020   |   5(unique masons in Oct,Sep, Aug)
30-09-2020   |   x1(unique masons in Sep, Aug, July)
31-08-2020   |   x2(unique masons in Aug, July, June)
... and so on.
``````

I have tried summarizing the data by quarter and monthly basis but it has not worked for me. Kindly help. Thanks in advance.

• Couldn't you just find last three months and find unique masons per month? Commented Nov 17, 2020 at 9:40
• Actually, the dataset is just a sample of the original. Here data is until August but actually the months goes back to April 2015. The months need to be grouped by in a reverse order i.e. oct,sep,aug; sep,aug,july; aug,july,june; july,june,may.. and so on.
– Ami
Commented Nov 17, 2020 at 11:44

Base R solution:

``````clean_df <- transform(
df,
Month_Vec = as.Date(gsub("^\\d{2}", "01", Registration_Date), "%d-%m-%Y"),
Registration_Date = as.Date(Registration_Date, "%d-%m-%Y")
)

drng <- range(clean_df\$Month_Vec)+31

eom_df <- merge(clean_df,
data.frame(eom = seq(drng[1], drng[2], by = "1 month")-1,
Month_Vec = sort(unique(clean_df\$Month_Vec))), by = "Month_Vec", all.x = TRUE)

lapply(unique(eom_df\$Month_Vec),
function(x){
lower_lim <- seq(x, length = 2, by = "-3 months")[2]
sbst <- subset(eom_df, Month_Vec >= lower_lim & Month_Vec <= x)
data.frame(
Registration_Date = max(sbst\$eom),
Unique_Masons = paste0(length(unique(sbst\$Mason_Id)), "(Unique Masons in ",
paste0(unique(month.abb[as.integer(substr(sbst\$Month_Vec, 6, 7))]),
collapse = ", "), ")"
)
)
}
)
``````

You can subtract 3 months from `Registration_Date` and find out how many unique `Mason_Id` are present between the two dates.

``````library(dplyr)
library(lubridate)

df %>%
mutate(Registration_Date = dmy(Registration_Date),
month_end_date = ceiling_date(Registration_Date, 'month') - 1,
three_month = month_end_date %m-% months(3) + 1,
Unique_Masons = purrr::map2(three_month, month_end_date,
~n_distinct(Mason_Id[between(Registration_Date, .x, .y)]))) %>%
distinct(month_end_date, Unique_Masons) %>%
arrange(desc(month_end_date))

#  month_end_date Unique_Masons
#1     2020-10-31             6
#2     2020-09-30             5
#3     2020-08-31             3
``````