Truthful Fair Division under Stochastic Valuations
arXiv:2602.12359v1 Announce Type: new
Abstract: We study no-money mechanisms for allocating indivisible items to strategic agents with additive preferences under a stochastic model. In this model, items’ values are drawn from an underlying distribution and mechanisms are evaluated with respect to this draw (e.g., in expectation, or with high probability). Motivated by worst-case impossibilities which show that truthfulness severely restricts fairness and efficiency, we ask whether truthful mechanisms continue to perform poorly on random instances.
We first focus on dominant-strategy incentive compatible (DSIC) mechanisms. For two agents, we obtain a tight picture. Specifically, we show that there exists a distribution under which no DSIC mechanism achieves an expected welfare approximation better than $frac{2+sqrt{2}}{4}approx 0.854$, and we give a DSIC mechanism that matches this bound for all distributions simultaneously. We further show that, for every distribution, there exists a DSIC mechanism that is envy-free with high probability and obtains the same welfare. A key ingredient is a new, tight connection between welfare guarantees of a family of DSIC, no-money mechanisms and i.i.d. prophet inequalities. This connection allows us to generalize to $n$ agents; in particular, we obtain a DSIC mechanism that achieves a $approx 0.745$ approximation to welfare, and another DSIC mechanism achieving a $1/2$-approximation welfare that is envy-free with high probability.
We then turn to Bayesian incentive compatibility (BIC). Under i.i.d. valuations, we show that BIC comes at essentially no cost: we design a prior-independent BIC mechanism that achieves a $(1-varepsilon)$-approximation to the optimal welfare, while being envy-free with high probability. Under independent but non-identical priors, we obtain BIC mechanisms that are $(1-varepsilon)$-approximately Pareto efficient and envy-free with high probability.