boost::numeric::ublas, there are three sparse vector types.
I can see that the
mapped_vector is essentially an
stl::map from index to value, which considers all not-found values to be 0 (or whatever is the common value).
But the documentation is sparse (ha ha) on information about
Is anyone able to clarify? I'm trying to figure out the algorithmic complexity of adding items to the various vectors, and also of dot products between two such vectors.
I see that
unbounded_array is the storage type, but I'm not quite sure what the specification is for that, either. If I create a compressed_vector with size 200,000,000, but with only 5 non-zero locations, is this less efficient in any way than creating a compressed_vector with size 10 and 5 non-zero locations?