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On solving the Lagrangian dual of integer programs via an incremental approach

机译:通过增量方法求解拉格朗日对偶整数程序

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The Lagrangian dual of an integer program can be formulated as a min-max problem where the objective function is convex, piecewise affine and, hence, nonsmooth. It is usually tackled by means of subgradient algorithms, or multiplier adjustment techniques, or even more sophisticated nonsmooth optimization methods such as bundle-type algorithms. Recently a new approach to solving unconstrained convex finite min-max problems has been proposed, which has the nice property of working almost independently of the exact evaluation of the objective function at every iterate-point. In the paper we adapt the method, which is of the descent type, to the solution of the Lagrangian dual. Since the Lagrangian relaxation need not be solved exactly, the approach appears suitable whenever the Lagrangian dual must be solved many times (e.g., to improve the bound at each node of a branch-and-bound tree), and effective heuristic algorithms at low computational cost are available for solving the Lagrangian relaxation. We present an application to the Generalized Assignment Problem (GAP) and discuss the results of our numerical experimentation on a set of standard test problems.
机译:整数程序的拉格朗日对偶可以公式化为最小-最大问题,其中目标函数是凸的,分段仿射的,因此不光滑。通常通过次梯度算法,乘数调整技术或什至更复杂的非平滑优化方法(例如捆绑类型算法)来解决该问题。最近,已经提出了一种解决无约束凸有限最小-最大问题的新方法,该方法具有很好的工作性质,几乎独立于每个迭代点对目标函数的精确评估。在本文中,我们将下降形式的方法应用于拉格朗日对偶的解。由于不必精确地求解拉格朗日弛豫,因此该方法在每次必须多次求解拉格朗日对偶(例如,以改善分支定界树的每个节点的边界)时显得合适,并且在低计算量下有效的启发式算法费用可用于解决拉格朗日松弛。我们提出了针对通用分配问题(GAP)的应用程序,并讨论了针对一组标准测试问题的数值实验的结果。

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