# Eliminate groups which have different values in R

I have a data frame like below

sample <- data.frame(ID=1:9, Group=c('AA','AA','AA','BB','BB','CC','CC','BB','CC'), Value = c(1,1,1,2,2,2,3,2,3))

Each group is supposed to have the same value.

ID       Group    Value
1        AA       1
2        AA       1
3        AA       1
4        BB       2
5        BB       2
6        CC       2
7        CC       3
8        BB       2
9        CC       3

If you look at the group CC, it doesn't have the same value. It varys with 2 and 3.

I need to ellimiate groups that doesn't have unique value.

In the case above, group CC has to be removed. Result should be like below

ID       Group    Value
1        AA       1
2        AA       1
3        AA       1
4        BB       2
5        BB       2
8        BB       2

Would you tell me simple and fast code in R that solves the problem?

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What have you done to try to solve the problem? –  John Jan 29 at 4:44

You can make a selector for sample using ave many different ways.

sample[ ave( sample\$Value, sample\$Group, FUN = function(x) length(unique(x)) ) == 1,]

or

sample[ ave( sample\$Value, sample\$Group, FUN = function(x) sum(x - x[1]) ) == 0,]

or

sample[ ave( sample\$Value, sample\$Group, FUN = function(x) diff(range(x)) ) == 0,]
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Here's a solution using dplyr:

library(dplyr)

sample <- data.frame(
ID = 1:9,
Group= c('AA', 'AA', 'AA', 'BB', 'BB', 'CC', 'CC', 'BB', 'CC'),
Value = c(1, 1, 1, 2, 2, 2, 3, 2, 3)
)

sample %.%
group_by(Group) %.%
filter(n_distinct(Value) == 1)

We group the data by Group, and then only select groups where the number of distinct values of Value is 1.

(This requires dplyr 0.1.1, which is not on CRAN yet, but will be very soon.)

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data.table version:

library(data.table)
sample <- as.data.table(sample)
sample[,if(length(unique(Value))==1) .SD ,by=Group]

#   Group ID Value
#1:    AA  1     1
#2:    AA  2     1
#3:    AA  3     1
#4:    BB  4     2
#5:    BB  5     2
#6:    BB  8     2

An alternative using ave if the data is numeric, is to check if the variance is 0:

sample[with(sample, ave(Value, Group, FUN=var ))==0,]

An alternative solution that could be faster on large data is:

setkey(sample, Group, Value)
ans <- sample[unique(sample)[, .N, by=Group][N==1, Group]]

The point is that calculating unique values for each group could be time consuming when there are more groups. Instead, we can set the key on the data.table, then take unique values by key (which is extremely fast) and then count the total values for each group. We then require only those where it is 1. We can then perform a join (which is once again very fast). Here's a benchmark on large data:

require(data.table)
set.seed(1L)
sample <- data.table(ID=1:1e7,
Group = sample(rep(paste0("id", 1:1e5), each=100)),
Value = sample(2, 1e7, replace=TRUE, prob=c(0.9, 0.1)))

system.time (
ans1 <- sample[,if(length(unique(Value))==1) .SD ,by=Group]
)
# minimum of three runs
#   user  system elapsed
# 14.328   0.066  14.382

system.time ({
setkey(sample, Group, Value)
ans2 <- sample[unique(sample)[, .N, by=Group][N==1, Group]]
})
# minimum of three runs
#   user  system elapsed
#  5.661   0.219   5.877

setkey(ans1, Group, ID)
setkey(ans2, Group, ID)
identical(ans1, ans2) # [1] TRUE
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@RicardoSaporta - I remember discussing with mnel here that using if is slightly quicker or more efficient. I can't recall why though. –  thelatemail Jan 29 at 3:40
I hadn't thought about that, and that makes perfect sense! Using if saves the call to .SD –  Ricardo Saporta Jan 29 at 4:08
@latemail, +1 very nice (and simple) solution. I've edited with another way of doing it, esp. on large data. Hope it's alright. –  Arun Jan 29 at 14:29

Here's an approach

> ind <- aggregate(Value~Group, FUN=function(x) length(unique(x))==1, data=sample)[,2]
> sample[sample[,"Group"] %in% levels(sample[,"Group"])[ind], ]
ID Group Value
1  1    AA     1
2  2    AA     1
3  3    AA     1
4  4    BB     2
5  5    BB     2
8  8    BB     2
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