非负矩阵分解的分层交替最小二乘并行化

M. Flatz, R. Kutil, M. Vajtersic
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引用次数: 1

摘要

非负矩阵分解(NMF)将一个大的非负矩阵近似为两个显著较小的非负矩阵的乘积。由于寻找最佳逼近的约束优化问题的非凸性,目前所有的算法都是迭代的,交替优化两个因子矩阵。由此产生的次线性收敛率引起了对高性能计算机并行实现的需求。在收敛性方面,NMF的最佳算法之一是分层交替最小二乘(HALS)算法。虽然其他交替非负最小二乘(ANLS)算法已经被证明具有相当直接的并行化,因为它们是独立的矩阵行和列,但HALS中的行和列更新必须严格连续,这更难以并行化。我们证明了一种类似于ANLS并行化的并行化策略的存在,并为多达64个进程提供了良好的加速,并且超出了令人满意的速度。与之前的解决方案相比,这些方案具有竞争力。据我们所知,HALS之前还没有被并行化过。
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Parallelization of the Hierarchical Alternating Least Squares Algorithm for Nonnegative Matrix Factorization
The Nonnegative Matrix Factorization (NMF) approximates a large nonnegative matrix as a product of two significantly smaller nonnegative matrices. Because of the nonconvexity of the constrained optimization problem of finding the best approximation, all current algorithms are iterative and optimize the two factor matrices alternatingly. The resulting sublinear convergence rates give rise to the demand for parallel implementations on high performance computers. One of the best algorithms for NMF in terms of convergence is the Hierarchical Alternating Least Squares (HALS) algorithm. While other Alternating Nonnegative Least Squares (ANLS) algorithms have been shown to have a rather straight-forward parallelization because of independent matrix rows and columns, the row and column updates in HALS must be strictly consecutive, which is more difficult to parallelize. We show that a parallelization strategy similar to ANLS parallelizations exists and yields good speedups for up to 64 processes and satisfactory beyond. These are competitive in comparison to previous solutions to the problem. To our knowledge, HALS has not been parallelized before.
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