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A Stochastic Minimum Cross-Entropy Method for Combinatorial Optimization and Rare-event Estimation

机译:组合优化和稀有事件估计的随机最小交叉熵方法

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摘要

We present a new method, called the minimum cross-entropy (MCE) method for approximating the optimal solution of NP-hard combinatorial optimization problems and rare-event probability estimation, which can be viewed as an alternative to the standard cross entropy (CE) method. The MCE method presents a generic adaptive stochastic version of Kull-backs classic MinxEnt method. We discuss its similarities and differences with the standard cross-entropy (CE) method and prove its convergence. We show numerically that MCE is a little more accurate than CE, but at the same time a little slower than CE. We also present a new method for trajectory generation for TSP and some related problems. We finally give some numerical results using MCE for rare-events probability estimation for simple static models, the maximal cut problem and the TSP, and point out some new areas of possible applications.
机译:我们提出了一种称为最小交叉熵(MCE)的新方法,用于逼近NP硬组合优化问题和稀有事件概率估计的最优解,可以看作是标准交叉熵(CE)的替代方法方法。 MCE方法提供了Kull-backs经典MinxEnt方法的通用自适应随机版本。我们讨论了与标准交叉熵(CE)方法的异同,并证明了其收敛性。我们用数字显示MCE比CE准确一些,但同时比CE慢一点。我们还提出了一种TSP轨迹生成的新方法及一些相关问题。最后,我们使用MCE给出了一些数值结果,用于简单静态模型,最大割问题和TSP的稀有事件概率估计,并指出了可能应用的一些新领域。

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