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@ -10618,3 +10618,35 @@ the local machine to, say, distributed processing on a remote compute cluster.")
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can be resolved using any future-supported backend, e.g. parallel on the local
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machine or distributed on a compute cluster.")
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(license license:gpl2+)))
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(define-public r-rsvd
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(package
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(name "r-rsvd")
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(version "1.0.0")
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(source
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(origin
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(method url-fetch)
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(uri (cran-uri "rsvd" version))
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(sha256
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(base32
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"0vjhrvnkl9rmvl8sv2kac5sd10z3fgxymb676ynxzc2pmhydy3an"))))
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(build-system r-build-system)
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(propagated-inputs
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`(("r-matrix" ,r-matrix)))
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(home-page "https://github.com/erichson/rSVD")
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(synopsis "Randomized singular value decomposition")
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(description
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"Low-rank matrix decompositions are fundamental tools and widely used for
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data analysis, dimension reduction, and data compression. Classically, highly
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accurate deterministic matrix algorithms are used for this task. However, the
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emergence of large-scale data has severely challenged our computational
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ability to analyze big data. The concept of randomness has been demonstrated
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as an effective strategy to quickly produce approximate answers to familiar
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problems such as the @dfn{singular value decomposition} (SVD). This package
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provides several randomized matrix algorithms such as the randomized singular
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value decomposition (@code{rsvd}), randomized principal component
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analysis (@code{rpca}), randomized robust principal component
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analysis (@code{rrpca}), randomized interpolative decomposition (@code{rid}),
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and the randomized CUR decomposition (@code{rcur}). In addition several plot
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functions are provided.")
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(license license:gpl3+)))
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