按比例贝塔政策做市

Joseph Jerome, Gregory Palmer, Rahul Savani
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引用次数: 5

摘要

本文介绍了指令驱动市场中做市商行为的一种新的表示形式。这种表示使用缩放beta分布,并概括了人工智能做市文献中采用的三种方法:单一价格水平选择、阶梯策略和“触碰做市”。阶梯策略在连续价格区间内放置均匀的成交量。基于比例贝塔分布的策略概括了这些,允许交易量在价格区间内倾斜。我们证明了这种灵活性对于库存管理是有用的,这是做市商面临的主要挑战之一。我们进行了三个主要实验:首先,我们将更灵活的基于beta的行为与阶梯策略的特殊情况进行比较;然后,我们研究了简单固定分布的性能;最后,我们设计并评估了一个简单直观的动态控制策略,该策略根据做市商获得的已签署库存以连续的方式调整行动。所有的经验评估使用高保真的限价订单模拟器,基于历史数据,每侧有50个级别。
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Market Making with Scaled Beta Policies
This paper introduces a new representation for the actions of a market maker in an order-driven market. This representation uses scaled beta distributions, and generalises three approaches taken in the artificial intelligence for market making literature: single price-level selection, ladder strategies, and “market making at the touch”. Ladder strategies place uniform volume across an interval of contiguous prices. Scaled beta distribution based policies generalise these, allowing volume to be skewed across the price interval. We demonstrate that this flexibility is useful for inventory management, one of the key challenges faced by a market maker. We conduct three main experiments: first, we compare our more flexible beta-based actions with the special case of ladder strategies; then, we investigate the performance of simple fixed distributions; and finally, we devise and evaluate a simple and intuitive dynamic control policy that adjusts actions in a continuous manner depending on the signed inventory that the market maker has acquired. All empirical evaluations use a high-fidelity limit order book simulator based on historical data with 50 levels on each side.
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