基于Mallows模型的等级聚合方法比较

Zhangqian Zhu, Xiaomeng Wang, Shi Qiu
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引用次数: 0

摘要

排名聚合是将多个基本排名聚合成一个更全面的排名的过程,在推荐系统、元搜索、数据库、基因组学等领域发挥着重要作用。与排名聚合方法比较相关的工作都没有合适的通用的数据生成机制来产生具有各种特征的数据,也缺乏更合理有效的算法评价性能指标。因此,本文提出了一种基于Mallows模型的通用数据生成机制,生成综合可控数据集,并采用广义Kendall秩相关系数和秩偏重叠对两种方法在不同设置下的性能进行评价和比较。此外,我们还考虑了指标之间的比较以及数据特征对算法的影响。本文对多领域的研究人员和决策者有一定的参考价值。
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Comparing Rank Aggregation Methods based on Mallows Model
Rank aggregation is the process of aggregating multiple base rankers into a single but more comprehensive ranker, which plays an important role in many domains such as recommender system, meta-search, database, genomics, etc. Works related to the comparison of rank aggregation methods all don’t have a suitable and general data generation mechanism to produce data with various characteristics and lack a more reasonable and effective algorithm evaluation performance index. Therefore, this paper presents a general data generation mechanism based on Mallows model to produce synthetic controllable datasets, uses generalized Kendall rank correlation coefficient and rank-biased overlap to evaluate and compare the performance of two kinds of methods under different settings. Besides, we also consider the comparison between indices and the impact of data characteristics on the algorithms. This paper may be helpful to researchers and decision-makers from multiple domains.
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