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Using the κ-Nearest Problems for Adaptive Multicriteria Planning

机译:使用κ最近问题进行自适应多准则规划

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This paper concerns the design and development of an adaptive planner that is able to adjust its parameters to the characteristics of a given problem and to the priorities set by the user concerning plan length and planning time. This is accomplished through the implementation of the k nearest neighbor machine learning algorithm on top of a highly adjustable planner, called HAP. Learning data are produced by running HAP offline on several problems from multiple domains using all value combinations of its parameters. When the adaptive planner HAPNN is faced with a new problem, it locates the k nearest problems, using a set of measurable problem characteristics, retrieves the performance data for all parameter configurations on these problems and performs a mul-ticriteria combination, with user-specified weights for plan length and planning time. Based on this combination, the configuration with the best performance is then used in order to solve the new problem. Comparative experiments with the statistically best static configurations of the planner show that HAPNN manages to adapt successfully to unseen problems, leading to an increased planning performance.
机译:本文涉及一种自适应计划器的设计和开发,该计划器可以根据给定问题的特征以及用户在计划长度和计划时间方面设置的优先级来调整其参数。这是通过在高度可调的计划程序HAP之上实施k最近邻机器学习算法来完成的。通过使用HAP参数的所有值组合,针对多个域中的多个问题离线运行HAP,可以生成学习数据。当自适应计划程序HAPNN遇到新问题时,它使用一组可测量的问题特征来定位k个最接近的问题,检索这些问题上所有参数配置的性能数据,并根据用户指定执行多指标组合计划长度和计划时间的权重。基于此组合,然后使用性能最佳的配置来解决新问题。使用计划程序统计上最佳的静态配置进行的比较实验表明,HAPNN设法成功地适应了看不见的问题,从而提高了计划绩效。

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