Greedy coordinate descent method on non-negative quadratic programming
编号:163
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更新:2020-08-05 10:17:28 浏览:597次
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摘要
The coordinate descent (CD) method has recently become popular for solving very large-scale problems, partly due to its simple update, low memory requirement, and fast convergence. In this paper, we explore the greedy CD on solving non-negative quadratic programming (NQP). The greedy CD generally has much more expensive per-update complexity than its cyclic and randomized counterparts. However, on the NQP, these three CDs have almost the same per-update cost, while the greedy CD can have significantly faster overall convergence speed. We also apply the proposed greedy CD as a subroutine to solve linearly constrained NQP and the non-negative matrix factorization. Promising numerical results on both problems are observed on instances with synthetic data and also image data.
关键词
greedy coordinate descent; quadratic programming; nonnegative matrix factorization
稿件作者
Chenyu Wu
Rensselaer Polytechnic Institute, USA
Yangyang Xu
Rensselaer Polytechnic Institute, USA
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