We investigate the fair allocation of indivisible goods to agents with possibly different entitlements represented by weights. Previous work has shown that guarantees for additive valuations with existing envy-based notions cannot be extended to the case where agents have matroid-rank (i.e., binary submodular) valuations. We propose two families of envy-based notions for matroid-rank and general submodular valuations, one based on the idea of transferability and the other on marginal values. We show that our notions can be satisfied via generalizations of rules such as picking sequences and maximum weighted Nash welfare. In addition, we introduce welfare measures based on harmonic numbers, and show that variants of maximum weighted harmonic welfare offer stronger fairness guarantees than maximum weighted Nash welfare under matroid-rank valuations.
翻译:我们调查了将不可分割的物品公平分配给可能具有不同权重的代理人的问题。我们以前的工作表明,用基于嫉妒的现有概念进行添加性估价的保证不能扩大到代理人拥有超自然级(即二进制子模量)估值的情况。我们建议对超自然级和一般亚模式估值采用基于嫉妒的两种概念,一种基于可转移性概念,另一种基于边际价值。我们表明,通过一般化规则,例如选择顺序和最高加权纳什福利,我们的概念可以得到满足。此外,我们引入基于调和数字的福利措施,并表明最高加权口音福利的变式提供了比根据超自然级估值的加权纳什福利更强有力的公平保障。