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Stochastic Non-Negative Matrix Factorization

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Jaxed NMF

NMF optimized through stochastic gradient descent with the option of adding l2 or l1 penalities on weight matrices.

NMF minimizes: L(W, H) = ||X-WH||_2 subject to W>0, H>0

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