基于迭代距离的无监督加权秩聚集模型

Leonidas Akritidis, Athanasios Fevgas, Panayiotis Bozanis
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引用次数: 1

摘要

排名聚合是一个流行的问题,它将来自不同来源(通常称为选民或法官)的不同排名列表组合在一起,并生成具有改进的项目排名的单个聚合列表。在这方面,现有方法的一部分试图通过平等对待所有选民来解决这个问题。然而,一些相关的研究证明,仔细有效地为每个选民分配不同的权重可以提高绩效。在本文中,我们将介绍一种无监督算法,用于学习特定主题或查询的投票人的权重。所提议的方法是基于这样一个事实,即如果一个选民提交了许多元素,这些元素在汇总列表中排名靠前,那么这个选民应该被视为专家,而那些建议排名靠后或根本没有出现的选民则应被视为专家。该算法迭代计算每个输入列表与聚合列表的距离,并修改投票人的权重,直到所有权重收敛。通过对来自6个TREC会议的输入列表进行汇总,实验证明了该方法的有效性。•信息系统→等级聚合;•计算理论→无监督学习和聚类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Iterative Distance-Based Model for Unsupervised Weighted Rank Aggregation
Rank aggregation is a popular problem that combines different ranked lists from various sources (frequently called voters or judges), and generates a single aggregated list with improved ranking of its items. In this context, a portion of the existing methods attempt to address the problem by treating all voters equally. Nevertheless, several related works proved that the careful and effective assignment of different weights to each voter leads to enhanced performance. In this article, we introduce an unsupervised algorithm for learning the weights of the voters for a specific topic or query. The proposed method is based on the fact that if a voter has submitted numerous elements which have been placed in high positions in the aggregated list, then this voter should be treated as an expert, compared to the voters whose suggestions appear in lower places or do not appear at all. The algorithm iteratively computes the distance of each input list with the aggregated list and modifies the weights of the voters until all weights converge. The effectiveness of the proposed method is experimentally demonstrated by aggregating input lists from six TREC conferences.CCS CONCEPTS• Information systems → Rank aggregation; •Theory of computation → Unsupervised learning and clustering.
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