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Prasen Mukherjee commented on MAHOUT-180: ----------------------------------------- This will be awesome. BTW, any references/articles on your approach will be of great help. I too am interested in paralellizing SVD ( I am sure there are many many folks like me :-) and will be willing to contribute in this. > port Hadoop-ified Lanczos SVD implementation from decomposer > ------------------------------------------------------------ > > Key: MAHOUT-180 > URL: https://issues.apache.org/jira/browse/MAHOUT-180 > Project: Mahout > Issue Type: New Feature > Components: Matrix > Affects Versions: 0.2 > Reporter: Jake Mannix > Priority: Minor > > I wrote up a hadoop version of the Lanczos algorithm for performing SVD on > sparse matrices available at http://decomposer.googlecode.com/, which is > Apache-licensed, and I'm willing to donate it. I'll have to port over the > implementation to use Mahout vectors, or else add in these vectors as well. > Current issues with the decomposer implementation include: if your matrix is > really big, you need to re-normalize before decomposition: find the largest > eigenvalue first, and divide all your rows by that value, then decompose, or > else you'll blow over Double.MAX_VALUE once you've run too many iterations > (the L^2 norm of intermediate vectors grows roughly as > (largest-eigenvalue)^(num-eigenvalues-found-so-far), so losing precision on > the lower end is better than blowing over MAX_VALUE). When this is ported to > Mahout, we should add in the capability to do this automatically (run a > couple iterations to find the largest eigenvalue, save that, then iterate > while scaling vectors by 1/max_eigenvalue). -- This message is automatically generated by JIRA. - You can reply to this email to add a comment to the issue online.