A Model for Queue Position Valuation in a Limit Order Book

C. Moallemi, Kai Yuan
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引用次数: 28

Abstract

Many financial markets operate as electronic limit order books under a price-time priority rule. In this setting, among all resting orders awaiting trade at a given price, earlier orders are prioritized for matching with contra-side liquidity takers. This creates a technological arms race among high-frequency traders and other automated market participants to establish early (and hence advantageous) positions in the resulting first-in-first-out (FIFO) queue. We develop a model for valuing orders based on their relative queue position that incorporates both eco- nomic (informational) and stochastic modeling (queueing) aspects. Our model identifies two important components of positional value: (i) a static component that relates to the trade-off at an instant of trade execution between earning a spread and incurring adverse selection costs, and incorporates the fact that adverse selection costs are increasing with queue position; (ii) a dynamic component, that captures the optionality associated with the future value that accrues by locking in a given queue position. Our model offers predictions of order value at different positions in the queue as a function of market primitives, and can be empirically calibrated. We validate our model by comparing it with estimates of queue value realized in backtesting simulations and find the predictions to be accurate. Moreover, for some large tick-size stocks, we find that queue value can be of the same order of magnitude as the bid-ask spread. This suggests that accurate valuation of queue position is a necessary and important ingredient in considering optimal execution or market-making strategies for such assets.
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极限订单簿中排队位置评估模型
许多金融市场在价格时间优先规则下以电子限价单的形式运作。在这种情况下,在所有等待以给定价格交易的订单中,较早的订单被优先考虑与对方流动性接受者匹配。这在高频交易者和其他自动化市场参与者之间造成了一场技术军备竞赛,以在由此产生的先进先出(FIFO)队列中建立早期(因此是有利的)头寸。我们开发了一个基于订单相对排队位置的评估模型,该模型结合了经济(信息)和随机建模(排队)方面。我们的模型确定了位置价值的两个重要组成部分:(i)静态组成部分与交易执行瞬间赚取差价和产生逆向选择成本之间的权衡有关,并纳入了逆向选择成本随着队列位置而增加的事实;(ii)动态组件,捕获锁定给定队列位置所产生的与未来价值相关的可选性。我们的模型提供了对队列中不同位置的订单价值的预测,作为市场原语的函数,并且可以进行经验校准。通过与回溯测试模拟中实现的队列值估计进行比较,我们验证了我们的模型,发现预测是准确的。此外,对于一些大型股票,我们发现排队值可能与买卖价差具有相同的数量级。这表明,在考虑此类资产的最佳执行或做市策略时,对排队位置的准确估值是必要且重要的因素。
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