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A Converging ACO Algorithm for Stochastic Combinatorial Optimization

机译:用于随机组合优化的融合ACO算法

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The paper presents a general-purpose algorithm for solving stochastic combinatorial optimization problems with the expected value of a random variable as objective and deterministic constraints. The algorithm follows the Ant Colony Optimization (ACO) approach and uses Monte-Carlo sampling for estimating the objective. It is shown that on rather mild conditions, including that of linear increment of the sample size, the algorithm converges with probability one to the globally optimal solution of the stochastic combinatorial optimization problem. Contrary to most convergence results for metaheuristics in the deterministic case, the algorithm can usually be recommended for practical application in an unchanged form, i.e., with the "theoretical" parameter schedule.
机译:本文介绍了一种求解随机组合优化问题的通用算法,随机变量的预期值作为目标和确定性约束。该算法遵循蚁群优化(ACO)方法,并使用Monte-Carlo采样来估计目标。结果表明,在相当温和的条件下,包括样本大小的线性增量,该算法将概率1收敛于随机组合优化问题的全局最优解。与确定性情况下的血培验中的大多数收敛结果相反,通常可以以不变的形式,即“理论”参数计划,该算法通常用于实际应用。

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