Near-Optimal Consistency-Robustness Trade-Offs for Learning-Augmented Online Knapsack Problems
Near-Optimal Consistency-Robustness Trade-Offs for Learning-Augmented Online Knapsack Problems
This paper introduces a family of learning-augmented algorithms for online knapsack problems that achieve near Pareto-optimal consistency-robustness trade-offs through a simple combination of trusted learning-augmented and worst-case algorithms. Our approach relies on succinct, practical predictions -- single values or intervals estimating the minimum value of any item in an offline solution. Additionally, we propose a novel fractional-to-integral conversion procedure, offering new insights for online algorithm design.
Mohammadreza Daneshvaramoli、Helia Karisani、Adam Lechowicz、Bo Sun、Cameron Musco、Mohammad Hajiesmaili
计算技术、计算机技术
Mohammadreza Daneshvaramoli,Helia Karisani,Adam Lechowicz,Bo Sun,Cameron Musco,Mohammad Hajiesmaili.Near-Optimal Consistency-Robustness Trade-Offs for Learning-Augmented Online Knapsack Problems[EB/OL].(2025-07-09)[2025-07-21].https://arxiv.org/abs/2406.18752.点此复制
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