内点法
班级(哲学)
计算机科学
数学
数学优化
最优化问题
应用数学
多样性(控制论)
点(几何)
泊松分布
人工智能
算法
几何学
统计
作者
Valentina De Simone,Daniela di Serafino,Jacek Gondzio,Spyridon Pougkakiotis,Marco Viola
出处
期刊:Siam Review
[Society for Industrial and Applied Mathematics]
日期:2022-11-01
卷期号:64 (4): 954-988
被引量:14
摘要
Large-scale optimization problems that seek sparse solutions have become ubiquitous. They are routinely solved with various specialized first-order methods. Although such methods are often fast, they usually struggle with not-so-well-conditioned problems. In this paper, specialized variants of an interior point-proximal method of multipliers are proposed and analyzed for problems of this class. Computational experience on a variety of problems, namely, multiperiod portfolio optimization, classification of data coming from functional magnetic resonance imaging, restoration of images corrupted by Poisson noise, and classification via regularized logistic regression, provides substantial evidence that interior point methods, equipped with suitable linear algebra, can offer a noticeable advantage over first-order approaches.
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