# Match and Count the Data Matrix in R

The dataset looks like this:

`````` Gene SampleName
gene1    sample1
gene1    sample2
gene1    sample3
gene2    sample2
gene2    sample3
gene2    sample4
gene3    sample1
gene3    sample5
``````

My goal is to make a data matrix like this:

``````       gene1 gene2 gene3
gene1      -     2     1
gene2      -     -     0
gene3      -     -     -
``````

`gene1` vs `gene2` is `2` because they share the same samples `sample2` and `sample3`. `gene1` vs `gene3` is 1 because they only share one same sample - `sample1`.

My question is how can I achieve this goal in R or Perl? The actual data set is much larger. I highly appreciate your help.

Here's the `dput(df)` output for R:

``````df <- structure(list(Gene = c("gene1", "gene1", "gene1", "gene2", "gene2",
"gene2", "gene3", "gene3"), SampleName = c("sample1", "sample2",
"sample3", "sample2", "sample3", "sample4", "sample1", "sample5"
)), .Names = c("Gene", "SampleName"), row.names = c(NA, -8L), class = "data.frame")
``````
-
Hello sgibb, thank you very much for making the format for me. –  user3637642 May 14 '14 at 17:03
Sure, thank you very much for your comment –  user3637642 May 14 '14 at 17:06

You can look at the `crossprod` (or `tcrossprod`) function along with `table`:

``````out <- tcrossprod(table(df))
out
#        Gene
# Gene    gene1 gene2 gene3
#   gene1     3     2     1
#   gene2     2     3     0
#   gene3     1     0     2
``````

Drop the diagonal and the lower-triangle to get the exact output you show.

``````diag(out) <- NA
out[lower.tri(out)] <- NA
print.table(out)  ## print.table deals with NAs differently
#        Gene
# Gene    gene1 gene2 gene3
#   gene1           2     1
#   gene2                 0
#   gene3
``````
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Nice. I didn't know about `tcrossprod` and rarely see anyone use `crossprod`, myself included. –  Richard Scriven May 14 '14 at 18:14
@Ananda, thank you very much, this is exactly what I want. –  user3637642 May 14 '14 at 18:34
@Ananda, I am sorry to bother you again. This code works perfect for the example. When I trying to use table(df) to the larger dataset, the SampleName is not unique, resulting in the count is not accurate. Do you have any idea which part I did was wrong. –  user3637642 May 14 '14 at 19:22
@user3637642, can you recreate it with a smaller dataset, update your question, and ping me here in the comments? It's hard to say otherwise. –  Ananda Mahto May 14 '14 at 19:35
``````perl -lane'
\$s{\$F[0]}++ or push @k, \$F[0];
\$h{\$F[1]}{\$F[0]} = 1;
END {
\$, = "\t";
print "", @k;
for \$c (@k) {
print \$c, map {
\$u = \$_;
(\$c eq \$u) ? "-" : scalar grep \$_->{\$c} && \$_->{\$u}, values %h;
} @k;
}
}
' file
``````

output

``````        gene1   gene2   gene3
gene1   -       2       1
gene2   2       -       0
gene3   1       0       -
``````
-
that looks quite complicated compared to @Ananda's R answer –  docendo discimus May 14 '14 at 17:21
@beginneR, I'm sure there are things that look complicated in R too, but simpler in other languages. –  Ananda Mahto May 14 '14 at 17:23
@beginneR yes, it does; it is completely another language (perl lacks some built-ins which can be found in R). –  Сухой27 May 14 '14 at 17:23
of course you are both right (and i have no clue of perl). just noticed the difference in this particular example. i didnt mean to say R > Perl –  docendo discimus May 14 '14 at 17:26