The Minimum Weighted Feedback Arc Set (MWFAS) problem is closely related to the task of deriving a global ranking from pairwise comparisons. Recent work by He et al. (ICML 2022) advanced the state of the art on ranking benchmarks using learning based methods, but did not examine the underlying connection to MWFAS. In this paper, we investigate this relationship and introduce efficient combinatorial algorithms for solving MWFAS as a means of addressing the ranking problem. Our experimental results show that these simple, learning free methods achieve substantially faster runtimes than recent learning based approaches, while also delivering competitive, and in many cases superior, ranking accuracy. These findings suggest that lightweight combinatorial techniques offer a scalable and effective alternative to deep learning for large scale ranking tasks.
翻译:最小加权反馈弧集(MWFAS)问题与从成对比较中推导全局排序的任务密切相关。He等人(ICML 2022)的最新工作通过基于学习的方法在排序基准测试中取得了先进成果,但未深入探究其与MWFAS的内在联系。本文研究了这一关系,并引入了高效的组合算法来求解MWFAS,以此解决排序问题。实验结果表明,这些简单、无需学习的方法在运行时间上显著快于近期基于学习的方案,同时在排序准确性方面表现出竞争力,且在许多情况下更为优越。这些发现表明,轻量级组合技术为大规模排序任务提供了一种可扩展且有效的深度学习替代方案。