RankMap: A Framework for Distributed Learning From Dense Data Sets.

IEEE Transactions on Neural Networks and Learning Systems(2018)

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摘要
This paper introduces RankMap, a platform-aware end-to-end framework for efficient execution of a broad class of iterative learning algorithms for massive and dense data sets. Our framework exploits data structure to scalably factorize it into an ensemble of lower rank subspaces. The factorization creates sparse low-dimensional representations of the data, a property which is leveraged to devise e...
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关键词
Matrix decomposition,Distributed databases,Computational modeling,Iterative algorithms,Sparse matrices,Signal processing algorithms,Partitioning algorithms
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