数学
稳健优化
半定规划
数学优化
二次约束二次规划
凸优化
内点法
二阶锥规划
圆锥曲线优化
二次增长
线性规划
最优化问题
椭球法
正多边形
次导数
可行区
二次规划
线性矩阵不等式
算法
几何学
作者
Aharon Ben‐Tal,Arkadi Nemirovski
标识
DOI:10.1287/moor.23.4.769
摘要
We study convex optimization problems for which the data is not specified exactly and it is only known to belong to a given uncertainty set U, yet the constraints must hold for all possible values of the data from U. The ensuing optimization problem is called robust optimization. In this paper we lay the foundation of robust convex optimization. In the main part of the paper we show that if U is an ellipsoidal uncertainty set, then for some of the most important generic convex optimization problems (linear programming, quadratically constrained programming, semidefinite programming and others) the corresponding robust convex program is either exactly, or approximately, a tractable problem which lends itself to efficient algorithms such as polynomial time interior point methods.
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