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Suppose I have two vectors of the same size vector< pair<float, NodeDataID> > v1, v2; I want to compute how many elements from both v1 and v2 have the same NodeDataID. For example if v1 = {<3.7, 22>, <2.22, 64>, <1.9, 29>, <0.8, 7>}, and v2 = {<1.66, 7>, <0.03, 9>, <5.65, 64>, <4.9, 11>}, then I want to return 2 because there are two elements from v1 and v2 that share the same NodeDataIDs: 7 and 64.

What is the quickest way to do that in C++ ?

Just for information, note that the type NodeDataIDs is defined as I use boost as:

typedef adjacency_list<setS, setS, undirectedS, NodeData, EdgeData> myGraph;
typedef myGraph::vertex_descriptor NodeDataID;

But it is not important since we can compare two NodeDataID using the operator == (that is, possible to do v1[i].second == v2[j].second)

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What about usingstl algorithm std::set_intersection and get its size? sgi.com/tech/stl/set_intersection.html – linello Nov 9 '12 at 21:56
If you had a sorted collection of each of the vector's NodeDataID components, you could iterate one and do a bisection search (i.e. std::equal_range, paired with std::distance) on the second. – Kerrek SB Nov 9 '12 at 22:03
@linello std::set_intersection expects the elements to be ordered and can therefore, in general, not be used on std::vector. – Oswald Nov 9 '12 at 22:08
@KerrekSB however, as you can see, it is not sorted ! – shn Nov 9 '12 at 22:21
@shn: Sorting the to vectors is O(n*log(n)), and then the count is O(n). That's still better than the O(n^2) for the unsorted, naive solution. – Kerrek SB Nov 9 '12 at 22:23

Put the elements of the first vector into a hash table. Iterate over the second vector, testing each element whether it is in the hash table.

A hash table has the advantage that inserts and lookups can be done in constant time. This means, finding the intersection can be done in linear time. This is optimal, because regardless of the algorithm, you have to look at each vector element at least once.

Boost has boost::intrusive::hashtable, but it's (as the name suggests), intrusive.

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Can you please complete your answer with a code using my configuration, to be more clear ? Thanks. – shn Nov 9 '12 at 22:11

The simplest solution is just to put elements of the first vector in a set then for the second vector we insert each element in this set (ret = myset.insert(an_id)) and if ret.second is false then the element exists, thus we increase a counter.

set<NodeDataID> myset;
int counter = 0;

for(int i = 0; i < v1.size(); ++i)

for(int i = 0; i < v2.size(); ++i)
   pair<set<NodeDataID>::iterator,bool> ret = myset.insert(v2[i].second);
   if(ret.second == false)
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