English

Tight Approximation Algorithms for p-Mean Welfare Under Subadditive Valuations

Computer Science and Game Theory 2020-07-07 v2

Abstract

We develop polynomial-time algorithms for the fair and efficient allocation of indivisible goods among nn agents that have subadditive valuations over the goods. We first consider the Nash social welfare as our objective and design a polynomial-time algorithm that, in the value oracle model, finds an 8n8n-approximation to the Nash optimal allocation. Subadditive valuations include XOS (fractionally subadditive) and submodular valuations as special cases. Our result, even for the special case of submodular valuations, improves upon the previously best known O(nlogn)O(n \log n)-approximation ratio of Garg et al. (2020). More generally, we study maximization of pp-mean welfare. The pp-mean welfare is parameterized by an exponent term p(,1]p \in (-\infty, 1] and encompasses a range of welfare functions, such as social welfare (p=1p = 1), Nash social welfare (p0p \to 0), and egalitarian welfare (pp \to -\infty). We give an algorithm that, for subadditive valuations and any given p(,1]p \in (-\infty, 1], computes (in the value oracle model and in polynomial time) an allocation with pp-mean welfare at least 18n\frac{1}{8n} times the optimal. Further, we show that our approximation guarantees are essentially tight for XOS and, hence, subadditive valuations. We adapt a result of Dobzinski et al. (2010) to show that, under XOS valuations, an O(n1ε)O \left(n^{1-\varepsilon} \right) approximation for the pp-mean welfare for any p(,1]p \in (-\infty,1] (including the Nash social welfare) requires exponentially many value queries; here, ε>0\varepsilon>0 is any fixed constant.

Keywords

Cite

@article{arxiv.2005.07370,
  title  = {Tight Approximation Algorithms for p-Mean Welfare Under Subadditive Valuations},
  author = {Siddharth Barman and Umang Bhaskar and Anand Krishna and Ranjani G. Sundaram},
  journal= {arXiv preprint arXiv:2005.07370},
  year   = {2020}
}

Comments

19 pages

R2 v1 2026-06-23T15:33:56.222Z