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增强型分支拉丁超立方体设计及其在自动算法配置中的应用

Enhanced branching Latin hypercube design and its application in automatic algorithm configuration

Scandinavian Journal of Statistics · 2025
被引 0
ABS 3

中文导读

针对分支和嵌套因素的实验设计难题,提出增强型分支拉丁超立方体设计,通过整合正交数组和切片拉丁超立方体设计,实现良好的低维分层特性和列相关性,并应用于自动算法配置的初始化。

Abstract

Abstract Designing experiments that involve branching and nested factors is challenging due to the complex relationships between these factors. Identification of optimal settings requires designs with good stratification properties for both nested and shared factors. To meet this requirement, we defined a type of enhanced branching Latin hypercube designs and developed several novel construction methods by integrating orthogonal arrays and sliced Latin hypercube designs. These designs exhibit attractive low‐dimensional stratification properties and perform well in terms of column correlation. Additionally, the size of each design can be flexibly chosen based on the trade‐off between the experimental budget and estimation accuracy. The simulation results demonstrate that the proposed design method exhibits significant superiority in terms of design metrics and estimation accuracy. Furthermore, we showcase the application of these designs in initializing automatic algorithm configuration. The proofs and additional design tables are provided in the Appendix.

实验设计拉丁超立方体抽样自动算法配置统计学