I am having a huge list of names-surnames and I am trying to merge them. For example `'Michael Jordan'`

with `Jordan Michael`

.

I am doing the following procedure using `pyspark`

:

- Calculate tfidf -> compute cos similarity -> convert to sparse matrix
- calculate string distance matrix -> convert to dense matrix
- element-wise multiplication between tfidf sparse matrix and string distance dense matrix to calculate the 'final similarity'

This works ok for 10000 names but I doubt about how long it will take to calculate a million names similarity as each matrix is 1000000x1000000 (As the matrices are symmetric I am taking only the upper triangle matrix but that doesn't change so much the high complexity time that is needed).

I have read that after computing the tfidf it is really useful to compute the SVD of the output matrices to reduce the dimensions. From the documentation I couldn't find an example of `computeSVD`

for pyspark. It doesn't exist?

And how can SVD can help in my case to reduce the high memory and computational time?

Any feedback and ideas are welcome.