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      On the Weighted Top-Difference Distance: Axioms, Aggregation, and Approximation

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          Abstract

          We study a family of distance functions on rankings that allow for asymmetric treatments of alternatives and consider the distinct relevance of the top and bottom positions for ordered lists. We provide a full axiomatic characterization of our distance. In doing so, we retrieve new characterizations of existing axioms and show how to effectively weaken them for our purposes. This analysis highlights the generality of our distance as it embeds many (semi)metrics previously proposed in the literature. Subsequently, we show that, notwithstanding its level of generality, our distance is still readily applicable. We apply it to preference aggregation, studying the features of the associated median voting rule. It is shown how the derived preference function satisfies many desirable features in the context of voting rules, ranging from fairness to majority and Pareto-related properties. We show how to compute consensus rankings exactly, and provide generalized Diaconis-Graham inequalities that can be leveraged to obtain approximation algorithms. Finally, we propose some truncation ideas for our distances inspired by Lu and Boutilier (2010). These can be leveraged to devise a Polynomial-Time-Approximation Scheme for the corresponding rank aggregation problem.

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          Author and article information

          Journal
          22 March 2024
          Article
          2403.15198
          c8dd61c1-e817-4d2a-852b-1fbc56fe0f8f

          http://creativecommons.org/licenses/by/4.0/

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          Custom metadata
          64 pages
          cs.GT cs.DM econ.TH stat.ME

          Theoretical computer science,Discrete mathematics & Graph theory,Methodology

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