# Remove rows of a data frame, based on the connection between multiple columns

Considering the following data frame:

``````# input
a <- data.frame(
X1=c("a","a","a","a","a","a","a","a","a","a","a","b","b","b","b","b","b","b","b","b"),
X2=c(2,4,6,2,4,7,9,5,4,7,3,5,8,4,3,5,7,6,3,5),
X3=c(5,6,1,4,7,5,5,4,4,2,5,4,5,2,4,7,3,5,3,7)
)
``````

How can I remove any row, which is smaller in terms of both variable 2 and variable 3 than another row, where the two rows are of the same factor level (variable 1)?

E.G.

``````a[1,1]==a[2,1] and
a[1,2]<a[2,2] and
a[1,3]<a[2,3] then a[1,] should be removed.

# output

a <- data.frame( X1=c("a","a","a","a","b","b","b","b"),
X2=c(4,4,7,9,8,5,6,5),
X3=c(6,7,5,5,5,7,5,7) )
``````
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The function `isRemoved` will give `TRUE` or `FALSE` given the condition for each row `i`:

``````isRemoved = function(i, a) {
out = logical(nrow(a))
for(j in 1:nrow(a)) {
out[j] = a[i,1]==a[j,1] & a[i,2]<a[j,2] & a[i,3]<a[j,3]
}
out = any(out)
return(out)
}
``````

then, you can apply that to all rows:

``````remove = sapply(1:nrow(a), isRemoved, a=a)
``````

and keep the row you want:

``````a.new = a[!remove, ]

a.new

X1 X2 X3
2   a  4  6
5   a  4  7
6   a  7  5
7   a  9  5
13  b  8  5
16  b  5  7
18  b  6  5
20  b  5  7
``````
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If speed is not your main concern, this is quite readable in my opinion:

``````library(plyr)
ddply(a, "X1", function(x) {
n <- seq_len(nrow(x))
m <- outer(n, n, Vectorize(function(i,j) all(x[i, 2:3] < x[j, 2:3])))
i <- rowSums(m) > 0L
return(x[!i, ])
})
``````

where `m` is a matrix of `TRUE` and `FALSE` telling if row `i` is dominated by row `j`, for all combinations of `i` and `j`.

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