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Sample Array:

x = [1,2,3,4,2,2,2]


y = [2,4,7,9]

Desired output:

result = [2,4,2,2,2]

I tried:

result = (x & y)

but this gives me [4,2].

How do I get: result = [2,4,2,2,2]?

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What about the first 2 in x? –  squiguy May 10 '13 at 23:20
He fixed it, looked like a typo. Also, what's with the close vote? –  nzifnab May 10 '13 at 23:54

3 Answers 3

up vote 4 down vote accepted

How about:

x - (x - y)
#=> [2, 4, 2, 2, 2]
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+1 This should be the accepted answer, not mine. –  Phrogz May 13 '13 at 14:52
This is such a simple answer! –  reko May 13 '13 at 18:39

First, don't capitalize variables in Ruby. Capitalization is for constants, like class names.

result = x.select {|i| y.include? i}

Note that select is also called find_all, and is the positive filter in ruby; the negative filter is reject. Between the braces you can put any code you want; it will be run once for each item of x (the item is passed in as an argument and becomes i), and the result of the whole call will include all the elements for which the block returns a true value.

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thank you! I will change the capitalization as well! –  reko May 10 '13 at 23:12

1-2 lines longer than @Mark's answer, but more efficient (if both arrays are large):

require 'set'
keep   = Set[2,4,7,9] # or Set.new(some_large_array)
result = x.select{ |n| keep.include?(n) } #=> [2, 4, 2, 2, 2]

The problem with writing...

x.select{ |i| y.include?(i) }

...is that this is O(x*y) the the number of elements in each array. With 100 elements in each you are doing 10,000 operations in the worst case; my answer does only 100 operations.

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Premature optimization is the root of all evil! But yeah, turning y into a Set could help performance. Also, I think the sorting of the result in the example is coincidental; it's got the elements in the same order as they were in the input list. –  Mark Reed May 10 '13 at 23:18
Also: IMHO understanding algorithmic complexity and picking one that is not potentially disastrous is not the same as premature optimization. It's just good coding. In the large software company that I work for you would be surprised by how many O(n^3) algorithms we've found buried in the code, placed there by interns years prior. These pieces of code eventually caused completely unacceptable performance problems when the product was used on slightly larger data sets. –  Phrogz May 10 '13 at 23:25
Well, I've seen more production issues caused by overcomplexity (some of it introduced by yours truly) than poor algorithm choices. In this case, even for small lists, there's probably no downside to using the Set, but in some analogous cases the overhead of the setup required to make the more efficient algorithm possible can easily trump the gains. That's why it's important to understand your data domain and transaction volume and that's where the "premature" part comes in. :) –  Mark Reed May 10 '13 at 23:30

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