发明名称 Variational EM algorithm for mixture modeling with component-dependent partitions
摘要 Described are variational Expectation Maximization (EM) embodiments for learning a mixture model using component-dependent data partitions, where the E-step is sub-linear in sample size while the algorithm still maintains provable convergence guarantees. Component-dependent data partitions into blocks of data items are constructed according to a hierarchical data structure comprised of nodes, where each node corresponds to one of the blocks and stores statistics computed from the data items in the corresponding block. A modified variational EM algorithm computes the mixture model from initial component-dependent data partitions and a variational R-step updates the partitions. This process is repeated until convergence. Component membership probabilities computed in the E-step are constrained such that all data items belonging to a particular block in a particular component-dependent partition behave in the same way. The E-step can therefore consider the blocks or chunks of data items via their representative statistics, rather than considering individual data items.
申请公布号 US8504491(B2) 申请公布日期 2013.08.06
申请号 US20100787308 申请日期 2010.05.25
申请人 THIESSON BO;WANG CHONG;MICROSOFT CORPORATION 发明人 THIESSON BO;WANG CHONG
分类号 G06F15/18;G06K9/62 主分类号 G06F15/18
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