GTAITHDec 7, 2023

Temporal Fairness in Multiwinner Voting

arXiv:2312.04417v219 citationsh-index: 15AAAI
AI Analysis

This work addresses the challenge of periodic and repeated elections in multiwinner voting, which is incremental as it builds on prior efforts by providing a general framework.

The paper tackles the problem of extending multiwinner voting to temporal settings by proposing a unified framework for studying temporal fairness, consolidating existing work and identifying gaps for future research.

Multiwinner voting captures a wide variety of settings, from parliamentary elections in democratic systems to product placement in online shopping platforms. There is a large body of work dealing with axiomatic characterizations, computational complexity, and algorithmic analysis of multiwinner voting rules. Although many challenges remain, significant progress has been made in showing existence of fair and representative outcomes as well as efficient algorithmic solutions for many commonly studied settings. However, much of this work focuses on single-shot elections, even though in numerous real-world settings elections are held periodically and repeatedly. Hence, it is imperative to extend the study of multiwinner voting to temporal settings. Recently, there have been several efforts to address this challenge. However, these works are difficult to compare, as they model multi-period voting in very different ways. We propose a unified framework for studying temporal fairness in this domain, drawing connections with various existing bodies of work, and consolidating them within a general framework. We also identify gaps in existing literature, outline multiple opportunities for future work, and put forward a vision for the future of multiwinner voting in temporal settings.

Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

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