信任域
数学
放松(心理学)
半定规划
趋同(经济学)
补语(音乐)
算法
多项式的
压缩传感
线性规划
时间复杂性
数学优化
应用数学
计算机科学
半径
数学分析
社会心理学
心理学
基因
生物化学
经济增长
表型
经济
化学
互补
计算机安全
作者
Alex L. Wang,Yunlei Lu,Fatma Kılınç-Karzan
摘要
.In this paper we develop efficient first-order algorithms for the generalized trust-region subproblem (GTRS), which has applications in signal processing, compressed sensing, and engineering. Although the GTRS, as stated, is nonlinear and nonconvex, it is well known that objective value exactness holds for its semidefinite programming (SDP) relaxation under a Slater condition. While polynomial-time SDP-based algorithms exist for the GTRS, their relatively large computational complexity has motivated and spurred the development of custom approaches for solving the GTRS. In particular, recent work in this direction has developed first-order methods for the GTRS whose running times are linear in the sparsity (the number of nonzero entries) of the input data. In contrast to these algorithms, in this paper we develop algorithms for computing \(\epsilon\) -approximate solutions to the GTRS whose running times are linear in both the input sparsity and the precision \(\log (1/\epsilon )\) whenever a regularity parameter is positive. We complement our theoretical guarantees with numerical experiments comparing our approach against algorithms from the literature. Our numerical experiments highlight that our new algorithms significantly outperform prior state-of-the-art algorithms on sparse large-scale instances.Keywordsgeneralized trust-region subproblemimplicit regularitylinear convergenceMSC codes90C2090C2290C26
科研通智能强力驱动
Strongly Powered by AbleSci AI