# Comparing two graphs

I need to compare many graphs(up to a few millions graph comparisons) and I wonder what is the fastest way to do that.

Graphs' vertices can have up to 8 neighbours/edges and vertex can have value 0 or 1. Rotated graph is still the same graph and every graph has identical number of vertices.

Graph can look like this:

Right now I'm comparing graphs by taking one vertex from first graph and comparing it with every vertex from second graph. If I find identical vertex then I check if both vertices' neighbours are identical and I repeat this until I know if graphs are identical or not.

This approach is too slow. Without discarding graphs that are for sure different, it takes more than 40 seconds to compare several thousands graphs with about one hundred vertices.

I was thinking about calculating unique value for every graph and then only compare values. I tried to do this, but I only managed to come up with values that if are equal then graphs may be equal and if values are different then graphs are different too.
If my program compares these values, then it calculates everything in about 2.5 second(which is still too slow).

And what is the best/fastest way to add vertex to this graph and update edges? Right now I'm storing this graph in `std::map< COORD, Vertex >` because I think searching for vertex is easier/faster that way.
COORD is vertex position on game board(vertices' positions are irrelevant in comparing graphs) and Vertex is:

``````struct Vertex
{
Player player; // Player is enum, FIRST = 0, SECOND = 1
Vertex* neighbours[8];
};
``````

And this graph is representing current board state of Gomoku with wrapping at board edges and board size n*n where n can be up to 2^16.

I hope I didn't made too many errors while writing this. I hope someone can help me.

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I can't prove it off the top of my head, but I think there may be a way to create a normalized representation of the graph. Then, you would need a transformation function that maps a graph to its normalized form. Prove that all equivalent graphs have the same normalized form, then you can reduce your problem to two transforms and a single compare. –  jxh Apr 4 '13 at 18:55
To find out whether two graphs are similar or not, following factors can be checked Number of vertices, number of edges, in degree and out degree, Euler cycle, Euler path.. etc –  siddstuff Apr 4 '13 at 19:10
Your question is not really well defined. When are two graphs 'the same'? Is it if they are isomorphic as unlabeled graphs? Then you are trying to solve the graph ismorphism problem which is NP, but not known to be in P or NP-hard. There is a library called 'nauty' that implements standard algorithms for it. –  Thomas Apr 4 '13 at 19:18
A different comment: Why would you store a Gomoku board as such a complicated structure instead of a 2d-array? The wrapping at board edges can be implemented using modulo arithmetic. –  Thomas Apr 4 '13 at 19:20
Just a suggestion. If you are willing to use boost graph library instead, this might be interesting for you. boost.org/doc/libs/1_39_0/libs/graph/doc/isomorphism.html –  user995502 Apr 4 '13 at 19:33

First you need to get each graph into a consistent representation, the natural way to do this is to create an ordered representation of the graph.

The first level of ordering is achieved by grouping according to the number of neighbours.

Each group of nodes with the same number of neighbours is then sorted by mapping their neighbours values (which are 0 and 1) on a binary number which is then used to enforce an order amongst the group nodes.

Then you can use a hashing function which iterates over each node of each group in the ordered form. The hashed value can then be used to provide an accelerated lookup

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+1. And there is even C++ implementation available with description of algorithm - itk.ilstu.edu/faculty/portegys/research/graph/graph-hash.pdf –  SChepurin Apr 4 '13 at 19:49

You have found out yourself that checking isomorphism can be done by checking one bord with all the n*n shifts times 8 rotations of the other, thus having `O(n^3)` complexity.

This can be reduced to `O(n^2)`. Let's shift only in one direction, say by moving the `x` axis. Then we only have to find the proper `y`-offset. For this, we concatenate the elements as follows for both graphs:

``````. . 1 .            0 . . 3
0 1 . .     =>     0 1 2 .     =>     0 3 0 1 2 0 2
. 0 . .            0 . 2 .
_______
1 2 3 4            ^---- a 0 indicates start of a row
``````

We get two arrays of size `n` and we have to check whether one is a cyclic permutation of the other. For this, we concatenate array a with itself and search for the other.

For example if the two arrays would be `a=0301202` and `b=0203012` we search for `0203012` in `03012020301202` using KMP or similar, which runs in `O(n + 2n)=O(n)` time (we can get rid of the whole preprocessing since the first array always is the same).

Combining this `O(n)` x-check with the `n` y-shifts and the `8` rotations gives `O(n^2)` overall complexity by using `O(n)` additional space.

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Only 4 rotations. And isn't `O(n^2)` complexity too big? Especially if n can be as big as 2^16 and I would have to check thousands of boards. And number of pieces on board could be very small compared to map size, that's why I tried to think of some algorithm which complexity would depend only on number of pieces. –  Michał Iwanicki Apr 4 '13 at 20:35
I don't think a deterministic algorithm can be faster than `O(n^2)`. –  ipc Apr 4 '13 at 20:46
But can't comparing complexity be independent from board size? And can you give better example to your method? How to compare for example: `. 1 .` `0 . .` `. 1 .` and `1 . .` `. . 0` `1 . .` –  Michał Iwanicki Apr 4 '13 at 21:05
To the board size: If `0 0 0 0 0 ... 0` (`z` times `0`) gets replaced by `-z`, this algorithm is independend of the board size. I meant `n` to be the number of nodes. –  ipc Apr 4 '13 at 21:19
To the example: First all cyclic permutations in `x`-direction are generated, then the offset in `y`-direction get calculated. In your example the `y`-offset is equal to `0`. –  ipc Apr 4 '13 at 21:20

The problem you're trying to solve is called graph isomorphism.

The problem is in NP (although it is not known whether it's NP-Complete) and no polynomial time algorithm for it has been found.

The algorithm you describe seems to take exponential time.

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it is not known to be NP-complete, not 'not NP-complete'. –  Thomas Apr 4 '13 at 19:22
There are algorithms in P for special cases like planar graphs. His graph is special and almost planar, maybe there's a chance. –  ipc Apr 4 '13 at 19:22
Graph isomorphism doesn't take into account that nodes may have values (here 0 and 1). –  Kyle Strand Apr 4 '13 at 19:23
@Thomas: Got it. –  abeln Apr 4 '13 at 19:23
@abeln: Your edit is still not correct, it is not known if the problem is NP-complete, in P, or maybe neither (or both :) ). The only thing that is known is that it is in NP: Given an isomorphism, one can quickly veryify that it is correct. So it could for instance still be that P!=NP but graph isomorphism is in P. It could also be that P!=NP and graph isomorphism is NP-complete. –  Thomas Apr 4 '13 at 19:29
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I apologize as I don't have the ability to comment yet. This isn't exactly an answer but a possible suggestion for optimization.

I would recommend to try memoization (store all the vertex pairs that are found to be different), so that the next time those two vertices are compared you just do a simple lookup and reply. This may improve the performance (or worsen it), depending on the type of graphs you have.

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