Rank aggregation aims to combine the preference rankings of a number of alternatives from different voters into a single consensus ranking. As a useful model for a variety of practical applications, however, it is a computationally challenging problem. In this paper, we propose an effective hybrid evolutionary ranking algorithm to solve the rank aggregation problem with both complete and partial rankings. The algorithm features a semantic crossover based on concordant pairs and a late acceptance local search reinforced by an efficient incremental evaluation technique. Experiments are conducted to assess the algorithm, indicating a highly competitive performance on benchmark instances compared with state-of-the-art algorithms. To demonstrate its practical usefulness, the algorithm is applied to label ranking, which is an important machine learning task.
翻译:排名汇总的目的是将不同选民的若干备选方案的优先等级合并为单一的协商一致等级。但是,作为各种实际应用的有用模式,这是一个具有计算挑战性的问题。在本文中,我们提出一个有效的混合进化排名算法,用完整和部分排名解决排名汇总问题。算法的特点是基于协调配对的语义交叉和由高效递增评价技术强化的迟验接受本地搜索。进行实验是为了评估算法,表明基准实例与最新算法相比具有高度竞争力。为了证明其实用性,算法应用到标签排序,这是一项重要的机器学习任务。