Stochastic approximation methods for nonconvex constrained optimization
时间 Datetime
2023-05-11 15:00 — 16:00
地点 Venue
讨论室(539)
报告人 Speaker
Xiao Wang
单位 Affiliation
Pengcheng Laboratory
邀请人 Host
范金燕
备注 remarks
报告摘要 Abstract
Nonconvex constrained optimization (NCO) has been one of the important research fields in optimization community. It has widely appeared in many application fields. However, challenges for solving NCO often arise due to larger scale of data and uncertainty involved in optimization models. In this talk, I will briefly introduce our recent progress on stochastic approximation (SA) methods for NCO, including stochastic primal-dual methods for problems with a large number of constraints and a nest structure, respectively, a zeroth-order SA method for NCO to explore the complexity dependence on dimensionarity and a SA method for nonconvex equality constrained optimization to pursue second-order stationarity.
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