The study of fairness in multiwinner elections focuses on settings where candidates have attributes. However, voters may also be divided into predefined populations under one or more attributes (e.g., "California" and "Illinois" populations under the "state" attribute), which may be same or different from candidate attributes. The models that focus on candidate attributes alone may systematically under-represent smaller voter populations. Hence, we develop a model, DiRe Committee WinnerDetermination (DRCWD), which delineates candidate and voter attributes to select a committee by specifying diversity and representation constraints and a voting rule. We analyze its computational complexity, inapproximability, and parameterized complexity. We develop a heuristic-based algorithm, which finds the winning DiRe committee in under two minutes on 63% of the instances of synthetic datasets and on 100% of instances of real-world datasets. We present an empirical analysis of the running time, feasibility, and utility traded-off. Overall, DRCWD motivates that a study of multiwinner elections should consider both its actors, namely candidates and voters, as candidate-specific models can unknowingly harm voter populations, and vice versa. Additionally, even when the attributes of candidates and voters coincide, it is important to treat them separately as diversity does not imply representation and vice versa. This is to say that having a female candidate on the committee, for example, is different from having a candidate on the committee who is preferred by the female voters, and who themselves may or may not be female.
翻译:多赢者选举的公平性研究侧重于候选人具有属性的环境,然而,选民也可以按照一种或多种属性(例如“状态”属性下的“卡利弗尼亚”和“伊利诺伊”人口)分为预先界定的人口,这些属性可能与候选人属性相同或不同。仅以候选人属性为重点的模式可能系统地低代表较小选民群。因此,我们开发了一个模型,即迪雷委员会Winner Decision(DRCWD),它通过具体说明多样性和代表限制以及投票规则,界定选择委员会的候选人和选民的优先属性。我们分析了其计算复杂性、不协调性和参数化复杂性。我们开发了基于超常态的算法,在63%的合成数据集和100%真实世界数据集中发现获胜者特性。我们提出了对运行时间、可行性和实用性交易进行经验分析。总体而言,DRCWD激励多赢者选举研究既应考虑其行为者,即候选人和选民,也分析其是否具有相对复杂性。我们开发了基于超常性模式的选民群体和选民形象,从而判断选民群体和选民代表本身可能无法理解。