Heuristic for Diverse Kemeny Rank Aggregation based on Quantum Annealing
Sven Fiergolla, Kevin Goergen, Patrick Neises, Petra Wolf

TL;DR
This paper explores using quantum annealing to solve the Kemeny Rank Aggregation problem, aiming to generate diverse high-quality solutions efficiently, and compares it with classical heuristics through experimental evaluation.
Contribution
It introduces a quantum annealing approach for KRA, including data reduction techniques and a comprehensive comparison with classical methods.
Findings
Quantum annealing provides promising runtime performance.
Quantum approach samples solutions differently due to quantum effects.
Data reduction improves problem-solving efficiency.
Abstract
The Kemeny Rank Aggregation (KRA) problem is a well-studied problem in the field of Social Choice with a variety of applications in many different areas like databases and search engines. Intuitively, given a set of votes over a set of candidates, the problem asks to find an aggregated ranking of candidates that minimizes the overall dissatisfaction concerning the votes. Recently, a diverse version of KRA was considered which asks for a sufficiently diverse set of sufficiently good solutions. The framework of diversity of solutions is a young and thriving topic in the field of artificial intelligence. The main idea is to provide the user with not just one, but with a set of different solutions, enabling her to pick a sufficiently good solution that satisfies additional subjective criteria that are hard or impossible to model. In this work, we use a quantum annealer to solve the KRA…
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Taxonomy
TopicsGame Theory and Voting Systems · Auction Theory and Applications · Optimization and Search Problems
