中文

Selection Hyper-heuristics Can Automatically Adjust the Learning Period to Optimally Solve Pseudo-Boolean Problems

神经与进化计算 2026-05-29 v1 人工智能 数据结构与算法 最优化与控制

摘要

The Random Gradient hyper-heuristic was recently shown to be able to learn the optimal neighbourhood size when optimizing the LeadingOnes benchmark via the Randomised Local Search (RLS) meta-heuristic. However, for this to happen, a learning period of a certain length τ\tau had to be used, differently from classic hyper-heuristics, which change their behaviour based on the success of only the previous iteration. In this paper, we show how to automatically set this new parameter value, relieving the user from the non-trivial task of controlling this novel algorithm parameter. We prove that the resulting hyper-heuristic selects the optimal neighbourhood size in a 1o(1)1-o(1) fraction of the iterations and, consequently, optimises the LeadingOnes benchmark in the best possible time (apart from lower-order terms) achievable with these neighborhood sizes.

关键词

引用

@article{arxiv.2605.29916,
  title  = {Selection Hyper-heuristics Can Automatically Adjust the Learning Period to Optimally Solve Pseudo-Boolean Problems},
  author = {Benjamin Doerr and Pietro S. Oliveto and John Alasdair Warwicker},
  journal= {arXiv preprint arXiv:2605.29916},
  year   = {2026}
}

备注

To appear in "Artificial Intelligence"