通过top-k启发方案进行有效投票:一种概率方法

Yuval Filmus, J. Oren
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引用次数: 21

摘要

Top-i投票是一种常见的偏好激发形式,因为它在选民和决策者方面都具有简单的概念。在一个典型的设置中,给定一组候选人,选民只需要提交他们对候选人的内在排名的k长度前缀。然后,决策者根据规定的投票规则,根据完整的偏好概况,试图正确预测获胜的候选人。这就需要在通信成本(给定指定的k值)和正确预测获胜者的能力之间进行权衡。我们关注的是任意位置评分规则,其中选民对候选人的评分是由一个向量给出的,该向量为排名赋实值。我们研究了三种偏好分布概率模型下top-k启发的表现:中性分布(公正文化);偏态分布,如Mallows分布;以及最坏情况(但完全已知)的分布。对于公正的文化,我们提供了一种分析前k名投票表现的技术。对于任意位置评分规则,我们提供了一组简洁的标准,足以获得确定高概率真正赢家所需的最小k的下界和上界。我们的下界适用于top-k投票方案的任何实现,而对于我们的上界,我们提供了一个具体的top-k引出算法。我们将进一步演示在Copeland的投票规则上使用该技术。对于有偏差分布的情况,我们证明了对于任何非恒定得分规则,获胜者可以在不查看投票的情况下以高概率预测。对于最坏情况分布,我们证明了对于指数衰减的评分规则,k = O(log m)对所有分布都是充分的。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient voting via the top-k elicitation scheme: a probabilistic approach
Top-i voting is a common form of preference elicitation due to its conceptual simplicity both on the voters' side and on the decision maker's side. In a typical setting, given a set of candidates, the voters are required to submit only the k-length prefixes of their intrinsic rankings of the candidates. The decision maker then tries to correctly predict the winning candidate with respect to the complete preference profile according to a prescribed voting rule. This raises a tradeoff between the communication cost (given the specified value of k), and the ability to correctly predict the winner. We focus on arbitrary positional scoring rules in which the voters' scores for the candidates is given by a vector that assigns the ranks real values. We study the performance of top-k elicitation under three probabilistic models of preference distribution: a neutral distribution (impartial culture); a biased distribution, such as the Mallows distribution; and a worst-case (but fully known) distribution. For an impartial culture, we provide a technique for analyzing the performance of top-k voting. For the case of arbitrary positional scoring rules, we provide a succinct set of criteria that is sufficient for obtaining both lower and upper bounds on the minimal k necessary to determine the true winner with high probability. Our lower bounds pertain to any implementation of a top-k voting scheme, whereas for our upper bound, we provide a concrete top-k elicitation algorithm. We further demonstrate the use of this technique on Copeland's voting rule. For the case of biased distributions, we show that for any non-constant scoring rule, the winner can be predicted with high probability without ever looking at the votes. For worst-case distributions, we show that for exponentially decaying scoring rules, k = O(log m) is sufficient for all distributions.
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