We study the design of prior-independent auctions in a setting with heterogeneous bidders. In particular, we consider the setting of selling to $n$ bidders whose values are drawn from $n$ independent but not necessarily identical distributions. We work in the robust auction design regime, where we assume the seller has no knowledge of the bidders' value distributions and must design a mechanism that is prior-independent. While there have been many strong results on prior-independent auction design in the i.i.d. setting, not much is known for the heterogeneous setting, even though the latter is of significant practical importance. Unfortunately, no prior-independent mechanism can hope to always guarantee any approximation to Myerson's revenue in the heterogeneous setting; similarly, no prior-independent mechanism can consistently do better than the second-price auction. In light of this, we design a family of (parametrized) randomized auctions which approximates at least one of these benchmarks: For heterogeneous bidders with regular value distributions, our mechanisms either achieve a good approximation of the expected revenue of an optimal mechanism (which knows the bidders' distributions) or exceeds that of the second-price auction by a certain multiplicative factor. The factor in the latter case naturally trades off with the approximation ratio of the former case. We show that our mechanism is optimal for such a trade-off between the two cases by establishing a matching lower bound. Our result extends to selling $k$ identical items to heterogeneous bidders with an additional $O\big(\ln^2 k\big)$-factor in our trade-off between the two cases.
翻译:我们与不同投标人一起研究前独立拍卖的设计。 特别是, 我们考虑向价值来自美元独立但不一定完全相同的分销的美元投标人设定出售价款。 我们是在强有力的拍卖设计制度下工作的, 我们假设卖方对投标人的价值分配一无所知, 并且必须设计一个先独立的机制。 虽然在i.d. 设定前独立拍卖设计上取得了许多强有力的结果, 但对于差异性设定(即使后者具有重大的实际重要性)却知之甚少。 不幸的是, 任何前独立机制都无法指望总是保证与混杂环境下Myerson收入的任何接近; 同样, 任何前独立机制都无法始终比第二次价格拍卖做得更好。 有鉴于此, 我们设计了一组(半独立)随机拍卖,这至少接近于这些基准之一: 对于定期价值分配的混合投标人来说,我们的机制要么能很好地估计最佳机制的预期收入(知道投标人的分配情况), 要么就会超过在混杂环境下的美元收益比率, 而在我们的第二代价交易中, 我们的第二代价交易中, 展示了我们第二代价交易中的一种最佳交易结果。