A consensus set for the aggregation of partial rankings: the case of the Optimal Set of Bucket Orders Problem
Juan A. Aledo, Jos\'e A. G\'amez, Alejandro Rosete

TL;DR
This paper introduces a novel approach to rank aggregation by generating a set of consensus rankings instead of a single one, improving solution fitness while maintaining interpretability, exemplified through the Optimal Bucket Order Problem.
Contribution
It proposes the Optimal Set of Bucket Orders Problem (OSBOP), extending the OBOP to produce multiple consensus rankings for better data representation.
Findings
Set of consensus rankings improves solution fitness
Method maintains interpretability of the rankings
Experimental results validate the approach
Abstract
In rank aggregation problems (RAP), the solution is usually a consensus ranking that generalizes a set of input orderings. There are different variants that differ not only in terms of the type of rankings that are used as input and output, but also in terms of the objective function employed to evaluate the quality of the desired output ranking. In contrast, in some machine learning tasks (e.g. subgroup discovery) or multimodal optimization tasks, attention is devoted to obtaining several models/results to account for the diversity in the input data or across the search landscape. Thus, in this paper we propose to provide, as the solution to an RAP, a set of rankings to better explain the preferences expressed in the input orderings. We exemplify our proposal through the Optimal Bucket Order Problem (OBOP), an RAP which consists in finding a single consensus ranking (with ties) that…
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Taxonomy
TopicsMulti-Criteria Decision Making · Advanced Algebra and Logic
MethodsSoftmax · Attention Is All You Need · Sparse Evolutionary Training
