摘要

We study how to enable auctions in the big data context to solve many upcoming data-based decision problems in the near future. We consider the characteristics of the big data including, but not limited to, velocity, volume, variety, and veracity, and we believe any auction mechanism design in the future should take the following factors into consideration: 1) generality (variety); 2) efficiency and scalability (velocity and volume); 3) truthfulness and verifiability (veracity). In this paper, we propose a privacy-preserving construction for auction mechanism design in the big data, which prevents adversaries from learning unnecessary information except those implied in the valid output of the auction. More specifically, we considered one of the most general form of the auction (to deal with the variety), and greatly improved the the efficiency and scalability by approximating the NP-hard problems and avoiding the design based on garbled circuits (to deal with velocity and volume), and finally prevented stakeholders from lying to each other for their own benefit (to deal with the veracity). The comparison with peer work shows that we greatly improved the asymptotic performance of peer works' overhead from the exponential growth to a linear growth and from linear growth to a logarithmic growth, which greatly contributes to the scalability of our mechanism.
机译:我们研究了如何在大数据环境中启用拍卖,以在不久的将来解决许多即将到来的基于数据的决策问题。我们考虑了大数据的特征,包括但不限于速度,数量,多样性和准确性,并且我们相信未来的任何拍卖机制设计都应考虑以下因素:1)普遍性(多样性); 2)效率和可伸缩性(速度和体积); 3)真实性和可验证性(准确性)。在本文中,我们提出了一种用于大数据拍卖机制设计的保护隐私的结构,该结构可以防止对手学习不必要的信息,除了那些在拍卖有效输出中暗含的信息。更具体地说,我们考虑了拍卖中最通用的形式之一(处理品种),并且通过近似NP难题并避免了基于乱码的设计(以处理速度)来极大地提高了效率和可扩展性和数量),并最终阻止利益相关者为了自己的利益而互相说谎(以应对真实性)。与对等工作的比较表明,我们从同等工作的指数增长到线性增长以及从线性增长到对数增长,极大地提高了对等工作开销的渐近性能,这极大地促进了我们机制的可扩展性。

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