Model-based Gradient Search for Permutation Problems

Josu Ceberio, Valentino Santucci
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引用次数: 0

Abstract

Global random search algorithms are characterized by using probability distributions to optimize problems. Among them, generative methods iteratively update the distributions by using the observations sampled. For instance, this is the case of the well-known Estimation of Distribution Algorithms. Although successful, this family of algorithms iteratively adopts numerical methods for estimating the parameters of a model or drawing observations from it. This is often a very time-consuming task, especially in permutation-based combinatorial optimization problems. In this work, we propose using a generative method, under the model-based gradient search framework, to optimize permutation-coded problems and address the mentioned computational overheads. To that end, the Plackett-Luce model is used to define the probability distribution on the search space of permutations. Not limited to that, a parameter-free variant of the algorithm is investigated. Conducted experiments, directed to validate the work, reveal that the gradient search scheme produces better results than other analogous competitors, reducing the computational cost and showing better scalability.
基于模型的梯度搜索置换问题
全局随机搜索算法的特点是使用概率分布来优化问题。其中,生成方法利用采样的观测值迭代更新分布。例如,这就是众所周知的分布估计算法的情况。虽然成功,但这类算法迭代地采用数值方法来估计模型的参数或从中提取观测值。这通常是一项非常耗时的任务,特别是在基于排列的组合优化问题中。在这项工作中,我们建议在基于模型的梯度搜索框架下使用生成方法来优化排列编码问题并解决上述计算开销。为此,使用Plackett-Luce模型定义排列搜索空间上的概率分布。在此基础上,研究了该算法的无参数变体。实验结果表明,梯度搜索方案比其他类似的竞争对手产生更好的结果,降低了计算成本,并具有更好的可扩展性。
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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