论文标题
两方数字商品拍卖:可扩展的隐私分析
Two and Three-Party Digital Goods Auctions: Scalable Privacy Analysis
论文作者
论文摘要
数字商品拍卖是一种拍卖的类型,潜在买家竞标他们愿意为某些物品支付的最大价格,而卖方可以以微不足道的成本和无限的数量生产。为了最大限度地利用她的福利,卖方的目标是找到最佳的销售价格,每个出价并不低的买家都会支付。出于公平和隐私的目的,买家可能会担心保护其投标的机密性。安全的多方计算是密码学的一个领域,它将允许卖方计算最佳销售价格,同时保证投标仍然是秘密的。自相矛盾的是,作为买家的出价,销售价格不可避免地揭示了一些私人信息。为了量化和限制这些泄漏,已经开发了基于定量信息流的通用框架和基于熵的技术。由于它们的组合性质,这些技术不会扩展到大型输入空间。在这项工作中,我们旨在将这些隐私分析扩展到特定的数字商品拍卖情况下。我们在两方拍卖中得出了私人输入的后最小值封闭式公式,这使我们能够有效地量化任意大型输入空间的信息泄漏。我们还提供了支持的实验证据,使我们能够提出一个猜想,使我们能够将结果扩展到任何数量的当事方。
A digital goods auction is a type of auction where potential buyers bid the maximal price that they are willing to pay for a certain item, which a seller can produce at a negligible cost and in unlimited quantity. To maximise her benefits, the aim for the seller is to find the optimal sales price, which every buyer whose bid is not lower will pay. For fairness and privacy purposes, buyers may be concerned about protecting the confidentiality of their bids. Secure Multi-Party Computation is a domain of Cryptography that would allow the seller to compute the optimal sales price while guaranteeing that the bids remain secret. Paradoxically, as a function of the buyers' bids, the sales price inevitably reveals some private information. Generic frameworks and entropy-based techniques based on Quantitative Information Flow have been developed in order to quantify and restrict those leakages. Due to their combinatorial nature, these techniques do not scale to large input spaces. In this work, we aim at scaling those privacy analyses to large input spaces in the particular case of digital goods auctions. We derive closed-form formulas for the posterior min-entropy of private inputs in two and three-party auctions, which enables us to effectively quantify the information leaks for arbitrarily large input spaces. We also provide supportive experimental evidence that enables us to formulate a conjecture that would allow us to extend our results to any number of parties.