# In R, select rows of a matrix that meet a condition

In R with a matrix:

``````     one two three four
[1,]   1   6    11   16
[2,]   2   7    12   17
[3,]   3   8    11   18
[4,]   4   9    11   19
[5,]   5  10    15   20
``````

I want to extract the submatrix whose rows have column three = 11. That is:

``````      one two three four
[1,]   1   6    11   16
[3,]   3   8    11   18
[4,]   4   9    11   19
``````

I want to do this without looping. I am new to R so this is probably very obvious but the documentation is often somewhat terse.

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The basic idea in every answer is that if you have a logical vector/matrix (TRUEs and FALSEs) of the same length as some index, you will select only the cases that are TRUE. Run the codes between `[ ]` in the answers and you will see this more clearly. –  Sacha Epskamp Mar 22 '11 at 14:36
+1 to "documentation is terse". –  appleLover Dec 21 '13 at 14:23

This is easier to do if you convert your matrix to a data frame using as.data.frame(). In that case the previous answers (using subset or m\$three) will work, otherwise they will not.

To perform the operation on a matrix, you can define a column by name:

``````m[m[, "three"] == 11,]
``````

Or by number:

``````m[m[,3] == 11,]
``````

Note that if only one row matches, the result is an integer vector, not a matrix.

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if you need to keep the matrix, then do `m[m[,3] == 11,,drop=FALSE]` –  Joris Meys Mar 22 '11 at 15:58
Thanks very much to all responders - sorry for delay in acknowledging, the stackoverflow notification email address was wrong! –  peter2108 Mar 24 '11 at 16:21

Subset is a very slow function , and I personally find it useless.

I assume you have a data.frame, array, matrix called `Mat` with `A`, `B`, `C` as column names; then all you need to do is:

• In the case of one condition on one column, lets say column A

``````Mat[which(Mat[,'A'] == 10), ]
``````

In the case of multiple conditions on different column, you can create a dummy variable. Suppose the conditions are `A = 10`, `B = 5`, and `C > 2`, then we have:

``````    aux = which(Mat[,'A'] == 10)
aux = aux[which(Mat[aux,'B'] == 5)]
aux = aux[which(Mat[aux,'C'] > 2)]
Mat[aux, ]
``````

By testing the speed advantage with `system.time`, the `which` method is 10x faster than the `subset` method.

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``````m <- matrix(1:20, ncol = 4)
colnames(m) <- letters[1:4]
``````

The following command will select the first row of the matrix above.

``````subset(m, m[,4] == 16)
``````

And this will select the last three.

``````subset(m, m[,4] > 17)
``````

The result will be a matrix in both cases. If you want to use column names to select columns then you would be best off converting it to a dataframe with

``````mf <- data.frame(m)
``````

Then you can select with

``````mf[ mf\$a == 16, ]
``````

Or, with the subset command.

-

If your matrix is called `m`, just use :

``````R> m[m\$three == 11, ]
``````
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That will work for data frames, but not matrices. –  neilfws Mar 22 '11 at 13:05