Beyond the Worst Case: Semi-Random Complexity Analysis of Winner Determination

Lirong Xia, Weiqiang Zheng
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引用次数: 2

Abstract

The computational complexity of winner determination is a classical and important problem in computational social choice. Previous work based on worst-case analysis has established NP-hardness of winner determination for some classic voting rules, such as Kemeny, Dodgson, and Young. In this paper, we revisit the classical problem of winner determination through the lens of semi-random analysis , which is a worst average-case analysis where the preferences are generated from a distribution chosen by the adversary. Under a natural class of semi-random models that are inspired by recommender systems, we prove that winner determination remains hard for Dodgson, Young, and some multi-winner rules such as the Chamberlin-Courant rule and the Monroe rule. Under another natural class of semi-random models that are extensions of the Impartial Culture, we show that winner determination is hard for Kemeny, but is easy for Dodgson. This illustrates an interesting separation between Kemeny and Dodgson. ,
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超越最坏情况:赢家决定的半随机复杂性分析
赢家确定的计算复杂度是计算社会选择中的一个经典而重要的问题。先前基于最坏情况分析的工作已经为一些经典的投票规则(如Kemeny, doddgson和Young)建立了获胜者确定的np -硬度。在本文中,我们通过半随机分析的镜头重新审视了经典的赢家确定问题,这是一种最差平均情况分析,其中偏好是由对手选择的分布产生的。在一类受推荐系统启发的自然半随机模型下,我们证明了Dodgson, Young和一些多赢家规则(如Chamberlin-Courant规则和Monroe规则)仍然难以确定赢家。在作为公正文化延伸的另一类自然的半随机模型下,我们证明了对Kemeny来说很难确定赢家,而对doddgson来说很容易。这说明了凯梅尼和道奇森之间一个有趣的区别。,
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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