I have a large corpus of data (text) that I have converted to a sparse term-document matrix (I am using `scipy.sparse.csr.csr_matrix`

to store sparse matrix). I want to find, for every document, top n nearest neighbour matches. I was hoping that `NearestNeighbor`

routine in `Python scikit-learn`

library (`sklearn.neighbors.NearestNeighbor`

to be precise) would solve my problem, but efficient algorithms that use space partitioning data structures such as `KD trees`

or `Ball trees`

do not work with sparse matrices. Only brute-force algorithm works with sparse matrices (which is infeasible in my case as I am dealing with large corpus).

Is there any efficient implementation of nearest neighbour search for sparse matrices (in Python or in any other language)?

Thanks.