Fair division of indivisible goods is a central challenge in artificial intelligence. For many prominent fairness criteria including envy-freeness (EF) or proportionality (PROP), no allocations satisfying these criteria might exist. Two popular remedies to this problem are randomization or relaxation of fairness concepts. A timely research direction is to combine the advantages of both, commonly referred to as Best of Both Worlds (BoBW). We consider fair division with entitlements, which allows to adjust notions of fairness to heterogeneous priorities among agents. This is an important generalization to standard fair division models and is not well-understood in terms of BoBW results. Our main result is a lottery for additive valuations and different entitlements that is ex-ante weighted envy-free (WEF), as well as ex-post weighted proportional up to one good (WPROP1) and weighted transfer envy-free up to one good (WEF(1,1)). It can be computed in strongly polynomial time. We show that this result is tight - ex-ante WEF is incompatible with any stronger ex-post WEF relaxation. In addition, we extend BoBW results on group fairness to entitlements and explore generalizations of our results to instances with more expressive valuation functions.
翻译:公平分割不可分割货物是人工智能的一个中心挑战。对于许多突出的公平标准,包括忌妒(EF)或相称性(PROP),可能不存在符合这些标准的分配。这个问题的两个流行的补救办法是随机化或放宽公平概念。一个及时的研究方向是将两者的优势(通常称为最佳世界(BBW))结合起来。我们认为,公平分割和应享权利可以调整公平概念,使之适应代理人之间的不同优先事项。这是对标准公平分配模式的重要概括,在BABW结果方面没有很好地理解。我们的主要结果是,对添加剂估值和不同应享权利进行彩票,事先加权无嫉妒(WEF),以及按一个商品(WPROP1)加权加权加权加权转移至一个商品(WEF(1,1))和加权转移嫉妒最多为一种商品(WEF(1,1))的优势。我们可以在非常多的时间内计算出这一结果。我们表明,这种结果是紧凑的,前WEF与任何较强的事后放松。此外,我们将BW关于集体公平性结果扩大到权利,并探索我们结果的更明确地评估。