数学学科Seminar第2856讲 非凸稀疏优化迭代阈值算法的全局解收敛性

创建时间:  2025/06/04  邵奋芬   浏览次数:   返回

报告题目 (Title):On Convergence of Iterative Thresholding Algorithms to Global Solution for Nonconvex Sparse Optimization(非凸稀疏优化迭代阈值算法的全局解收敛性)

报告人 (Speaker):胡耀华 教授(深圳大学)

报告时间 (Time):2025年6月4日(周三)15:30

报告地点 (Place):校本部F309

邀请人(Inviter):余长君 教授

主办部门:8455新葡萄场网站数学系、8455新葡萄场网站运筹与优化开放实验室、上海市运筹学会

报告摘要:Sparse optimization is a popular research topic in applied mathematics and optimization, and nonconvex sparse regularization problems have been extensively studied to ameliorate the statistical bias and enjoy robust sparsity promotion capability in vast applications. However, puzzled by the nonconvex and nonsmooth structure in nonconvex regularization problems, the convergence theory of their optimization algorithms is still far from completion: only the convergence to a stationary point was established in the literature, while there is still no theoretical evidence to guarantee the convergence to a global minimum or a true sparse solution. This talk aims to find an approximate global solution or true sparse solution of an under-determined linear system. For this purpose, we propose two types of iterative thresholding algorithms with the continuation technique and the truncation technique respectively. We introduce a notion of limited shrinkage thresholding operator and apply it, together with the restricted isometry property, to show that the proposed algorithms converge to an approximate global solution or true sparse solution within a tolerance relevant to the noise level and the limited shrinkage magnitude. Applying the obtained results to nonconvex regularization problems with SCAD, MCP and Lp penalty and utilizing the recovery bound theory, we establish the convergence of their proximal gradient algorithms to an approximate global solution of nonconvex regularization problems.

上一条:数学学科Seminar第2857讲 “隐城票务”的两面性:基于选择的网络收益管理模型分析

下一条:数学学科Seminar第2855讲 舰基环境下异构系统智能调度规划


数学学科Seminar第2856讲 非凸稀疏优化迭代阈值算法的全局解收敛性

创建时间:  2025/06/04  邵奋芬   浏览次数:   返回

报告题目 (Title):On Convergence of Iterative Thresholding Algorithms to Global Solution for Nonconvex Sparse Optimization(非凸稀疏优化迭代阈值算法的全局解收敛性)

报告人 (Speaker):胡耀华 教授(深圳大学)

报告时间 (Time):2025年6月4日(周三)15:30

报告地点 (Place):校本部F309

邀请人(Inviter):余长君 教授

主办部门:8455新葡萄场网站数学系、8455新葡萄场网站运筹与优化开放实验室、上海市运筹学会

报告摘要:Sparse optimization is a popular research topic in applied mathematics and optimization, and nonconvex sparse regularization problems have been extensively studied to ameliorate the statistical bias and enjoy robust sparsity promotion capability in vast applications. However, puzzled by the nonconvex and nonsmooth structure in nonconvex regularization problems, the convergence theory of their optimization algorithms is still far from completion: only the convergence to a stationary point was established in the literature, while there is still no theoretical evidence to guarantee the convergence to a global minimum or a true sparse solution. This talk aims to find an approximate global solution or true sparse solution of an under-determined linear system. For this purpose, we propose two types of iterative thresholding algorithms with the continuation technique and the truncation technique respectively. We introduce a notion of limited shrinkage thresholding operator and apply it, together with the restricted isometry property, to show that the proposed algorithms converge to an approximate global solution or true sparse solution within a tolerance relevant to the noise level and the limited shrinkage magnitude. Applying the obtained results to nonconvex regularization problems with SCAD, MCP and Lp penalty and utilizing the recovery bound theory, we establish the convergence of their proximal gradient algorithms to an approximate global solution of nonconvex regularization problems.

上一条:数学学科Seminar第2857讲 “隐城票务”的两面性:基于选择的网络收益管理模型分析

下一条:数学学科Seminar第2855讲 舰基环境下异构系统智能调度规划