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Lifting Convex Inequalities for Bipartite Bilinear Programs

机译:举起二分的双线性计划的凸不等式

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The goal of this paper is to derive new classes of valid convex inequalities for quadratically constrained quadratic programs (QCQPs) through the technique of lifting. Our first main result shows that, for sets described by one bipartite bilinear constraint together with bounds, it is always possible to lift a seed inequality that is valid for a restriction obtained by fixing variables to their bounds, when the lifting is accomplished using affine functions of the fixed variables. In this setting, sequential lifting involves solving a non-convex nonlinear optimization problem each time a variable is lifted, just as in Mixed Integer Linear Programming. To reduce the computational burden associated with this procedure, we develop a framework based on subadditive approximations of lifting functions that permits sequence independent lifting of seed inequalities for separable bipartite bilinear sets. In particular, this framework permits the derivation of closed-form valid inequalities. We then study a separable bipartite bilinear set where the coefficients form a minimal cover with respect to right-hand-side. For this set, we derive a "bilinear cover inequality", which is second-order cone representable. We argue that this bilinear covering inequality is strong by showing that it yields a constant-factor approximation of the convex hull of the original set. We study its lifting function and construct a two-slope subadditive upper bound. Using this subadditive approximation, we lift fixed variable pairs in closed-form, thus deriving a "lifted bilinear cover inequality" that is valid for general separable bipartite bilinear sets with box constraints.
机译:本文的目标是通过升降技术来推导出二次约束的二次程序(QCQPS)的新类别的有效凸不等式。我们的第一主要结果表明,对于一个二角形双线性约束与界限一起描述的组,当使用仿射功能完成时,总是可以提起通过将变量固定到其界限而获得的限制的种子不等式。固定变量。在该设置中,顺序提升涉及每次提升变量时求解非凸非线性优化问题,就像混合整数线性编程一样。为了减少与此过程相关的计算负担,我们基于提升函数的次级近似开发了一个框架,其允许序列独立提升可分离的双链双线性套装的种子不等式。特别是,该框架允许终止封闭式有效不等式的推导。然后,我们研究一种可分离的双链双线性组,其中系数相对于右手侧形成最小的盖子。对于这个集合,我们得出了“双线性封面不等式”,这是二阶锥可代表的。我们认为,这种双线性覆盖不等式是强大的,通过表明它产生了原始集合的凸孔的恒定因子近似。我们研究了其提升功能,并构建了一个双斜率次级上限。使用该次级近似值,我们抬起封闭形式的固定变量对,从而导出了与盒子约束的一般可分离双链双线性组有效的“提升的双线性覆盖不等式”。

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