Noisy Black Box Optimization: Algorithms and Effort Analysis

讲座简介


In this talk we present a computational complexity analysis for optimization problems where the objective function value can only be estimated with errors at any decision point. In particular, we study two different settings. In the first setting, the model is basically stochastic programming, but only one sample is taken at each decision point.

In the second setting, the objective value can be estimated arbitrarily close to the true value, but at a cost that is increasing with regard to the inverse of the precision desired. Furthermore, we discuss extensions of the analysis to a general constrained model with a composite objective function, consisting of the vague objective and a non-smooth regularizer.

时间


2017-06-28

下午15:00

主讲人


ShuZhong Zhang, University of Minnesota

地点


信息管理与工程学院308室
上海财经大学(第三教学楼西侧)
上海市杨浦区武东路100号