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Randomized algorithms for distributed computation of principal component analysis and singular value decomposition

机译:用于主要成分分析和奇异值分解的分布式计算的随机算法

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摘要

Randomized algorithms provide solutions to two ubiquitous problems: (1) the distributed calculation of a principal component analysis or singular value decomposition of a highly rectangular matrix, and (2) the distributed calculation of a low-rank approximation (in the form of a singular value decomposition) to an arbitrary matrix. Carefully honed algorithms yield results that are uniformly superior to those of the stock, deterministic implementations in Spark (the popular platform for distributed computation); in particular, whereas the stock software will without warning return left singular vectors that are far from numerically orthonormal, a significantly burnished randomized implementation generates left singular vectors that are numerically orthonormal to nearly the machine precision.
机译:随机算法为两个无处不在的问题提供了解决方案:(1)高矩形矩阵的主要成分分析或奇异值分解的分布式计算,以及(2)低秩近似的分布式计算(以奇异的形式 值分解)到任意矩阵。 仔细磨练的算法均匀的结果,均匀优于库存,火花的确定性实现(分布式计算的流行平台); 特别是,虽然股票软件没有警告返回剩余的奇异载体,但远离数值正常的左字载体,一个显着抛光的随机化实现产生了几乎机器精度的左字奇异载体。

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