Multidimensional Bayesian Utility Maximization: Tight Approximations to Welfare

Abstract

We initiate the study of multidimensional Bayesian utility maximization, focusing on the unit-demand setting where values are i.i.d. across both items and buyers. The seminal result of Hartline and Roughgarden '08 studies simple, information-robust mechanisms that maximize utility for $n$ i.i.d. agents and $m$ identical items via an approximation to social welfare as an upper bound, and they prove this gap between optimal utility and social welfare is $\Theta(1+\log{n/m})$ in this setting. We extend these results to the multidimensional setting. To do so, we develop simple, prior-independent, approximately-optimal mechanisms, targeting the simplest benchmark of optimal welfare. We give a $(1-1/e)$-approximation when there are more items than buyers, and a $\Theta(\log{n/m})$-approximation when there are more buyers than items, and we prove that this bound is tight in both $n$ and $m$ by reducing the i.i.d. unit-demand setting to the identical items setting. Finally, we include an extensive discussion section on why Bayesian utility maximization is a promising research direction. In particular, we characterize complexities in this setting that defy our intuition from the welfare and revenue literature, and motivate why coming up with a better benchmark than welfare is a hard problem itself.

Cite

Text

Goldner and Lundy. "Multidimensional Bayesian Utility Maximization: Tight Approximations to Welfare." Advances in Neural Information Processing Systems, 2025.

Markdown

[Goldner and Lundy. "Multidimensional Bayesian Utility Maximization: Tight Approximations to Welfare." Advances in Neural Information Processing Systems, 2025.](https://mlanthology.org/neurips/2025/goldner2025neurips-multidimensional/)

BibTeX

@inproceedings{goldner2025neurips-multidimensional,
  title     = {{Multidimensional Bayesian Utility Maximization: Tight Approximations to Welfare}},
  author    = {Goldner, Kira and Lundy, Taylor},
  booktitle = {Advances in Neural Information Processing Systems},
  year      = {2025},
  url       = {https://mlanthology.org/neurips/2025/goldner2025neurips-multidimensional/}
}