I have a data.frame


ID <- c(1,1,1,1,2,2,3,3,3,3,4,4,5)
Score <- c(20,22,34,56,78,98,56,43,45,33,24,54,22)
Quarter <- c("Q1","Q2","Q3","Q4","Q1","Q2","Q1","Q2","Q3","Q4","Q1","Q2","Q1")
df <- data.frame(ID,Score,Quarter)

I only want to deal with the data that has all 4 quarters (Q1,Q2,Q3,Q4 in column "Quarters"). One way I thought I could do this is subset when the ID is present 4 times because it is repeated in each Quarter. I am having a hard time sub-setting on the count of IDs. I tried:

filter(df, count(df, vars = ID)==4)

But it did not work and guidance would be greatly appreciated. Thank you

up vote 3 down vote accepted

One way we can do is by using n_distinct to get unique values for each ID and filter the group which has all 4 values.

df %>%
   group_by(ID) %>%
   filter(n_distinct(Quarter) == 4)

#    ID Score Quarter
#  <dbl> <dbl> <fct>  
#1  1.00  20.0 Q1     
#2  1.00  22.0 Q2     
#3  1.00  34.0 Q3     
#4  1.00  56.0 Q4     
#5  3.00  56.0 Q1     
#6  3.00  43.0 Q2     
#7  3.00  45.0 Q3     
#8  3.00  33.0 Q4     

Equivalent base R implementation using ave would be

df[as.numeric(ave(df$Quarter, df$ID, FUN = function(x) length(unique(x)))) == 4, ]
  • Thank you! Never used n_distinct before it does the trick! – Jake Apr 17 at 2:52

Here are a few alternatives. The last three are base solutions.

#1 is an SQL solution which creates a one-column data frame df0 with only those IDs having 4 quarters which is then joined to df thereby eliminating all other IDs.

#2 is a dplyr solution which filters the groups retaining only those with 4 rows.

#3 is a data.table solution which returns the rows for those ID groups having 4 rows and NULL for the other groups. This has the effect of eliminating the other groups.

#4 is a zoo solution which converts df to a wide form zoo object with quarters along the top and ID as the time index. It then removes any row having an NA and reshapes back to the original using fortify.zoo also reordering back to a sorted order. The last line of the solution could be omitted if the row order does not matter. Interestingly it does not use knowledge of the number 4.

#5 is a base solution which splits df into a list of data frames, one per ID, and then uses Filter to extract those having 4 rows. Finally it puts it all back together.

#6 is a base solution which creates a vector having one element per row of df containing the number of rows (including the current row) having the ID in that row. Then use subset to reduce df to those rows for which that vector equals 4.

#7 is a base solution which splits df into a list of data frames, one per ID, and then uses Reduce to iterate over it appending the current data frame to what we have so far if it has 4 rows or just keeping what we have so far if not.

# 1
sqldf("with df0 as (
  select ID from df group by ID having count(*) = 4
select * from df join df0 using (ID)")

# 2
df %>% group_by(ID) %>% filter(n() == 4) %>% ungroup

# 3 
as.data.table(df)[, if (nrow(.SD) == 4) .SD, by = ID]

# 4
z <- read.zoo(df, split = "Quarter")
df2 <- fortify.zoo(na.omit(z), melt = TRUE, names = names(df)[c(1, 3:2)])
df2 <- df2[order(df2$ID, df2$Quarter), ]

# 5
do.call("rbind", Filter(function(x) nrow(x) == 4, split(df, df$ID)))

# 6
subset(df, ave(ID, ID, FUN = length) == 4)

# 7
Reduce(function(x, y) if (nrow(y) == 4) rbind(x, y) else x, split(df, df$ID))

Here is another base R method using table, rowSums and %in%. We get the frequency count of 'ID', 'Quarter' columns with table, convert it to logical matrix where 0 values are TRUE and all others FALSE (!table(...)), get the rowwise sum (rowSums), convert to logical vector, get the names of the elements that are TRUE and create a comparison with the ID using %in% to subset the dataset

subset(df, ID %in% names(which(!rowSums(!table(df[c(1,3)])))))
#   ID Score Quarter
#1   1    20      Q1
#2   1    22      Q2
#3   1    34      Q3
#4   1    56      Q4
#7   3    56      Q1
#8   3    43      Q2
#9   3    45      Q3
#10  3    33      Q4
  • 1
    Great thanks for the answer – Jake Apr 17 at 2:53

I just figured out I can do this as well:

df[df$ID %in% names(table(df$ID))[table(df$ID)==4],]

It gets the desired result with using only the counts from ID

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