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Adaptive Market Making via Online Learning

机译:通过在线学习自适应市场制作

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摘要

We consider the design of strategies for market making in an exchange. A market maker generally seeks to profit from the difference between the buy and sell price of an asset, yet the market maker also takes exposure risk in the event of large price movements. Profit guarantees for market making strategies have typically required certain stochastic assumptions on the price fluctuations of the asset in question; for example, assuming a model in which the price process is mean reverting. We propose a class of "spread-based" market making strategies whose performance can be controlled even under worst-case (adversarial) settings. We prove structural properties of these strategies which allows us to design a master algorithm which obtains low regret relative to the best such strategy in hindsight. We run a set of experiments showing favorable performance on recent real-world stock price data.
机译:我们考虑交易所市场制作策略的设计。市场制造商通常寻求从买卖价格之间的差异赢得资产的差异,但市场制造商也在大量价格走势时承担风险。市场制定策略的利润保障通常需要对有关资产的价格波动的某些随机假设;例如,假设价格过程是卑鄙的模型。我们提出了一类“基于传播”市场制作策略,即使在最坏情况(对抗性)设置中也可以控制性能。我们证明了这些策略的结构性,使我们能够设计一种主算法,相对于最佳的后智策略,获得低遗憾。我们在最近的现实世界股票价格数据上运行一组实验,呈现出有利的表现。

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