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首页> 外文期刊>SIAM Journal on Optimization: A Publication of the Society for Industrial and Applied Mathematics >Solving log-determinant optimization problems by a Newton-CG primal proximal point algorithm
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Solving log-determinant optimization problems by a Newton-CG primal proximal point algorithm

机译:用牛顿-CG原始近点算法求解对数行列式优化问题

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We propose a Newton-CG primal proximal point algorithm (PPA) for solving large scale log-determinant optimization problems. Our algorithm employs the essential ideas of PPA, the Newton method, and the preconditioned CG solver. When applying the Newton method to solve the inner subproblem, we find that the log-determinant term plays the role of a smoothing term as in the traditional smoothing Newton technique. Focusing on the problem of maximum likelihood sparse estimation of a Gaussian graphical model, we demonstrate that our algorithm performs favorably compared to existing state-of-the-art algorithms and is much preferred when a high quality solution is required for problems with many equality constraints.
机译:我们提出了一种牛顿-CG原始近端算法(PPA)来解决大规模对数行列式优化问题。我们的算法采用了PPA,牛顿法和预处理CG求解器的基本思想。当应用牛顿法求解内部子问题时,我们发现对数行列式项像传统的平滑牛顿技术一样起着平滑项的作用。着眼于高斯图形模型的最大似然稀疏估计问题,我们证明了我们的算法与现有的最新算法相比性能良好,当对许多等式约束的问题要求高质量的解决方案时,该算法是首选。

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