hgpu.org » EM and MM algorithms
Hua Zhou, Kenneth Lange, Marc A. Suchard
Tags: Block relaxation, CUBLAS, CUDA, EM and MM algorithms, Mathematics, Multidimensional scaling, Nonnegative matrix factorization, nVidia, nVidia GeForce GTX 280, PET scanning, Statistics
October 30, 2010 by hgpu
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