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Improving the performance of weighted Lagrange-multiplier methods for nonlinear constrained optimization

机译:改进用于非线性约束优化的加权Lagrange乘子方法的性能

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摘要

Nonlinear constrained optimization problems in discrete and continuous spaces are an important class of problems studied extensively in artificial intelligence and operations research. These problems can be solved by a Lagrange-multiplier method in continuous space and by an extended discrete Lagrange-multiplier method indiscrete space. When constraints are satisfied, these methods rely on gradient descents in the objective space to find high-quality solutions. On the other hand, when constraints are violated, these methods rely on gradient ascents in the Lagrange-multiplier space in order to increase the penalties on unsatisfied constraints and to force the constraints into satisfaction. The balance between gradient descents and gradient ascents depends on the relative weights between the objective function and the constraints, which indirectly control the convergence speed and solution quality of the Lagrangian method. To improve convergence speed without degrading solution quality, we propose an algorithm to dynamically control the relative weights between the objective and the constraints. Starting from an initial weight, the algorithm automatically adjusts the weights based on the behavior of the search progress. With this strategy, we are able to eliminate divergence, reduce oscillation, and speed up convergence. We show improved convergence behavior of our proposed algorithm on both nonlinear continuous and discrete problems. (C) 2000 Elsevier Science Inc. All rights reserved. [References: 9]
机译:离散和连续空间中的非线性约束优化问题是人工智能和运筹学中广泛研究的重要一类问题。这些问题可以通过连续空间中的拉格朗日乘数法和离散空间中的扩展离散拉格朗日乘数法来解决。当满足约束条件时,这些方法将依靠目标空间中的梯度下降来找到高质量的解决方案。另一方面,当违反约束条件时,这些方法依赖Lagrange乘子空间中的梯度上升,以增加对未满足约束条件的惩罚并迫使约束条件满足。梯度下降和梯度上升之间的平衡取决于目标函数和约束之间的相对权重,间接权重控制拉格朗日方法的收敛速度和解质量。为了在不降低求解质量的情况下提高收敛速度,我们提出了一种动态控制目标和约束之间相对权重的算法。从初始权重开始,该算法会根据搜索进度的行为自动调整权重。通过这种策略,我们能够消除发散,减少振荡并加快收敛。我们展示了我们提出的算法在非线性连续和离散问题上的改进的收敛性。 (C)2000 Elsevier Science Inc.保留所有权利。 [参考:9]

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