发明名称 Distributed non-negative matrix factorization
摘要 Architecture that scales up the non-negative matrix factorization (NMF) technique to a distributed NMF (denoted DNMF) to handle large matrices, for example, on a web scale that can include millions and billions of data points. To analyze web-scale data, DNMF is applied through parallelism on distributed computer clusters, for example, with thousands of machines. In order to maximize the parallelism and data locality, matrices are partitioned in the short dimension. The probabilistic DNMF can employ not only Gaussian and Poisson NMF techniques, but also exponential NMF for modeling web dyadic data (e.g., dwell time of a user on browsed web pages).
申请公布号 US8356086(B2) 申请公布日期 2013.01.15
申请号 US20100750772 申请日期 2010.03.31
申请人 MICROSOFT CORPORATION;LIU CHAO;YANG HUNG-CHIH;FAN JINLIANG;HE LI-WEI;WANG YI-MIN 发明人 LIU CHAO;YANG HUNG-CHIH;FAN JINLIANG;HE LI-WEI;WANG YI-MIN
分类号 G06F15/16;G06F15/173;G06F17/30 主分类号 G06F15/16
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