通过凸优化的高效做市,以及与在线学习的连接

Jacob D. Abernethy, Yiling Chen, Jennifer Wortman Vaughan
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引用次数: 91

摘要

我们提出了在组合或无限状态或结果空间上设计证券市场的一般框架。该框架允许设计计算效率高的市场,以适应具有有限收益的任意但相对较小的证券空间。我们证明了任何满足一组直观条件的市场都必须通过凸成本函数对证券进行定价,该凸成本函数由共轭对偶构造。我们的框架只需要在凸包上进行优化,而不是直接处理指数级大或无限的结果空间。通过将自动做市问题简化为凸优化,在凸优化中存在许多有效的算法,我们得到了一系列针对各种问题的新的多项式时间定价机制。我们通过对一些特定市场的设计来展示该框架的优点。我们还表明,通过放松凸包,我们可以在不损害市场机构有限预算的情况下获得计算可追溯性。尽管我们的框架旨在为具有非常大的结果空间的市场提供高效的自动化做市商,但该框架也为市场设计与机器学习之间的关系以及完整的市场设置提供了新的见解。使用我们的框架,我们说明了基于成本函数的市场和在线学习之间的数学相似性,并建立了基于成本函数的市场和完全市场的市场评分规则之间的对应关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient Market Making via Convex Optimization, and a Connection to Online Learning
We propose a general framework for the design of securities markets over combinatorial or infinite state or outcome spaces. The framework enables the design of computationally efficient markets tailored to an arbitrary, yet relatively small, space of securities with bounded payoff. We prove that any market satisfying a set of intuitive conditions must price securities via a convex cost function, which is constructed via conjugate duality. Rather than deal with an exponentially large or infinite outcome space directly, our framework only requires optimization over a convex hull. By reducing the problem of automated market making to convex optimization, where many efficient algorithms exist, we arrive at a range of new polynomial-time pricing mechanisms for various problems. We demonstrate the advantages of this framework with the design of some particular markets. We also show that by relaxing the convex hull we can gain computational tractability without compromising the market institution’s bounded budget. Although our framework was designed with the goal of deriving efficient automated market makers for markets with very large outcome spaces, this framework also provides new insights into the relationship between market design and machine learning, and into the complete market setting. Using our framework, we illustrate the mathematical parallels between cost-function-based markets and online learning and establish a correspondence between cost-function-based markets and market scoring rules for complete markets.
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