A Shortest-Path-Based Approach for the Stochastic Knapsack Problem with Non-Decreasing Expected Overfilling Costs

T. Range, Dawid Kozlowski, N. Petersen
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引用次数: 5

Abstract

Abstract The knapsack problem (KP) is concerned with the selection of a subset of multiple items with known positive values and weights such that the total value of selected items is maximized and their total weight does not exceed capacity. Item values, item weights, and capacity are known in the deterministic case. We consider the stochastic KP (SKP) with stochastic item weights. For this variant of the SKP we combine the chance constrained KP (CCKP) and the SKP with simple recourse (SRKP). The chance constraint allows for a violation of capacity, but the probability of a violation beyond an imposed limit is constrained. The violation of the capacity constraint is also included in the objective function in terms of a penalty function as in the SRKP. Penalty is an increasing function of the expected number of units of violation with proportionality as a special case. We formulate the SKP as a network problem and demonstrate that it can be solved by a label-setting dynamic programming approach for the shortest path problem with resource constraints (SPPRC). We develop a dominance criterion for an elimination of states in the dynamic programming approach using only the deterministic value of items along with mean and variance of the stochastic weight of items corresponding to the associated paths in the underlying network. It is shown that a lower bound for the impact of potential extensions of paths is available as an additional means to limit the number of states provided the penalty cost of expected overtime is convex. Our findings are documented in terms of a computational study.
摘要:背包问题(KP)是指选取具有已知正数值和权值的多个物品的子集,使所选物品的总价值最大,且总重量不超过容量的问题。在确定性情况下,项目值、项目权重和容量是已知的。我们考虑随机项目权值的随机KP (SKP)。对于这种变体的SKP,我们将机会约束KP (CCKP)和具有简单追索权的SKP (SRKP)结合起来。机会约束允许违反容量,但违反超出规定限制的概率受到约束。与SRKP一样,对能力约束的违反也以惩罚函数的形式包含在目标函数中。刑罚是期望违犯单位数的递增函数,具有比例性,是一种特殊情况。我们将SKP描述为一个网络问题,并证明了它可以通过带有资源约束的最短路径问题(SPPRC)的标签设置动态规划方法来解决。在动态规划方法中,我们仅使用项目的确定性值以及对应于底层网络中相关路径的项目随机权重的均值和方差,建立了状态消除的优势准则。结果表明,在期望超时的惩罚成本为凸的情况下,路径潜在扩展影响的下界可以作为限制状态数量的一种附加手段。我们的发现被记录在一项计算研究中。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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