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I am working with sparse matrices stored in a general sparse format (compressed row). I.e. I store the matrix:

0 x y 0
0 0 0 0 
z 0 0 0

in the form of:

  • Matrix dimensions: [3,4]
  • The offset of each row: [0,2,2,3]
  • The column of each nonzero entry: [1,2,0]
  • Nonzero elements: [x,y,z]

I am looking for hash function which would allow me to "cache" the sparsity patterns (i.e. the first three vectors with integers above). For that I suppose that I need a good hash function that I can supply to the hash map implementation I was planning to use, namely C++'s std::unordered_map.

Does anyone have some tips on how to find a good hash function for a problem like this?

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1 Answer 1

up vote 2 down vote accepted

If your CSR representation is unique per matrix, i.e. the nonzero elements appear in left-to-right, top-to-bottom order, then you can hash all the vectors and combine the hashes using boost::hash_combine (if you don't want a dependency on Boost, just copy-paste it, it's very short).

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(+1) Great point about the ordering of elements. –  NPE May 17 '12 at 15:13
    
Great tip about the boost::hash_combine. I will look into it. My nonzero elements are indeed ordered like you suggest. –  Joel May 17 '12 at 16:09
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