Sublinear Approximation Algorithm for Nash Social Welfare with XOS Valuations
Siddharth Barman, Anand Krishna, Pooja Kulkarni, Shivika Narang

TL;DR
This paper introduces the first sublinear approximation algorithm for maximizing Nash social welfare with XOS valuations using demand and XOS oracles, breaking previous approximation barriers and advancing the understanding of valuation query complexities.
Contribution
It develops a novel sublinear approximation algorithm for NSW with XOS valuations, utilizing demand and XOS oracles, and establishes lower bounds on query complexity.
Findings
First sublinear approximation algorithm for NSW with XOS valuations.
Breaks the $O(n)$-approximation barrier for this problem.
Shows exponential query complexity is necessary for near-optimal approximation.
Abstract
We study the problem of allocating indivisible goods among agents with the objective of maximizing Nash social welfare (NSW). This welfare function is defined as the geometric mean of the agents' valuations and, hence, it strikes a balance between the extremes of social welfare (arithmetic mean) and egalitarian welfare (max-min value). Nash social welfare has been extensively studied in recent years for various valuation classes. In particular, a notable negative result is known when the agents' valuations are complement-free and are specified via value queries: for XOS valuations, one necessarily requires exponentially many value queries to find any sublinear (in ) approximation for NSW. Indeed, this lower bound implies that stronger query models are needed for finding better approximations. Towards this, we utilize demand oracles and XOS oracles; both of these query models are…
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