Instantaneous order impact and high-frequency strategy optimization in limit order books

Federico Gonźalez, M. Schervish
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引用次数: 8

Abstract

We propose a limit order book (LOB) model with dynamics that account for both the impact of the most recent order and the shape of the LOB. We present an empirical analysis showing that the type of the last order significantly alters the submission rate of immediate future orders, even after accounting for the state of the LOB. To model these effects jointly we introduce a discrete Markov chain model. Then on these improved LOB dynamics, we find the policy for optimal order choice and placement in the share purchasing problem by framing it as a Markov decision process. The optimal policy derived numerically uses limit orders, cancellations and market orders. It looks to exploit the state of the LOB summarized by the volume at the bid/ask and the type of the most recent order to obtain the best execution price, avoiding non-execution and adverse selection risk simultaneously. Market orders are used aggressively when the mid-price is expected to move adversely. Limit orders are placed under favorable LOB conditions and canceled when non-execution or adverse selection probability is high. Using ultra high-frequency data from the NASDAQ stock exchange we compare our optimal policy with other submission strategies that use a subset of all available order types and show that ours significantly outperforms them.
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限价订单中的瞬时订单影响和高频策略优化
我们提出了一个动态的限价订单(LOB)模型,该模型考虑了最近订单的影响和LOB的形状。我们提出了一项实证分析,表明即使考虑了LOB的状态,最后订单的类型也会显著改变近期订单的提交率。为了模拟这些效应,我们引入了一个离散马尔可夫链模型。然后,在这些改进的LOB动力学上,我们通过将股票购买问题构建为马尔可夫决策过程,找到了最优订单选择和放置策略。数值推导的最优策略使用限价单、取消单和市价单。它寻求利用由买卖量和最近订单类型总结的LOB状态,以获得最佳执行价格,同时避免不执行和逆向选择风险。当预期中间价格走势不利时,市场订单被积极使用。限价订单在有利的LOB条件下下,当不执行或逆向选择概率高时取消。使用来自纳斯达克股票交易所的超高频数据,我们将我们的最佳策略与使用所有可用订单类型子集的其他提交策略进行比较,并表明我们的策略明显优于它们。
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