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Image Space Analysis for Vector Variational Inequalities with Matrix Inequality Constraints and Applications

机译:具有矩阵不等式约束的向量变分不等式的图像空间分析及其应用

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In this paper, vector variational inequalities (VVI) with matrix inequality constraints are investigated by using the image space analysis. Linear separation for VVI with matrix inequality constraints is characterized by using the saddle-point conditions of the Lagrangian function. Lagrangian-type necessary and sufficient optimality conditions for VVI with matrix inequality constraints are derived by utilizing the separation theorem. Gap functions for VVI with matrix inequality constraints and weak sharp minimum property for the solutions set of VVI with matrix inequality constraints are also considered. The results obtained above are applied to investigate the Lagrangian-type necessary and sufficient optimality conditions for vector linear semidefinite programming problems as well as VVI with convex quadratic inequality constraints.
机译:本文通过图像空间分析研究了具有矩阵不等式约束的向量变分不等式(VVI)。具有拉格朗日函数的鞍点条件可以对具有矩阵不等式约束的VVI进行线性分离。利用分离定理,推导了具有矩阵不等式约束的VVI的Lagrangian型充要条件。还考虑了具有矩阵不等式约束的VVI的间隙函数以及具有矩阵不等式约束的VVI的解集的弱尖锐最小特性。以上获得的结果用于研究向量线性半定规划问题以及具有凸二次不等式约束的VVI的Lagrangian型最优条件。

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