# How to find the number of identical elements in two vectors?

I have two vectors:

`````` a <- letters[1:5]
b <- c('a','k','w','p','b','b')
``````

Now I want to count how many times each letter in vector `a` shows up in `b`. I want to get:

`````` # 1  2  0  0  0
``````

What should I do?

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Seems like homework to me –  David Arenburg Jun 17 '14 at 18:23
what? What do you mean? –  user3749549 Jun 17 '14 at 19:06

Make `b` into a factor with the levels specified by `a`. Values that are not in `a` will turn into `<NA>`. When you tabulate, they will be discarded (unless you specify `useNA="ifany"`).

``````table(factor(b,levels=a))

a b c d e
1 2 0 0 0
``````
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`tabulate` works on integer vectors and is fast; match your letters to the universe of possible letters, then tabulate the index; use `length(a)` to ensure that there is one count for each possible value.

``````> tabulate(match(b, a), length(a))
[1] 1 2 0 0 0
``````

This is faster than the 'obvious' table() solution

``````library(microbenchmark)
f0 = function() table(factor(b,levels=a))
f1 = function() tabulate(match(b, a), length(a))
``````

and then

``````> microbenchmark(f0(), f1())
Unit: microseconds
expr     min       lq  median       uq     max neval
f0() 566.824 576.2985 582.950 594.4200 798.275   100
f1()  56.816  60.0180  63.305  65.4185 120.441   100
``````

but also more general, e.g., matching numeric values without coercing to a string representation.

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``````>sapply(a, function(x) sum(x==b))

a b c d e
1 2 0 0 0
``````

Alternative solution. The anonymouse function can be modified to implement fuzzy name matching with a package such as `stringdist`

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