Adaptive Optimal Market Making Strategies with Inventory Liquidation Cos

Jonathan Chávez-Casillas, José E. Figueroa-López, Chuyi Yu, Yi Zhang
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Abstract

A novel high-frequency market-making approach in discrete time is proposed that admits closed-form solutions. By taking advantage of demand functions that are linear in the quoted bid and ask spreads with random coefficients, we model the variability of the partial filling of limit orders posted in a limit order book (LOB). As a result, we uncover new patterns as to how the demand's randomness affects the optimal placement strategy. We also allow the price process to follow general dynamics without any Brownian or martingale assumption as is commonly adopted in the literature. The most important feature of our optimal placement strategy is that it can react or adapt to the behavior of market orders online. Using LOB data, we train our model and reproduce the anticipated final profit and loss of the optimal strategy on a given testing date using the actual flow of orders in the LOB. Our adaptive optimal strategies outperform the non-adaptive strategy and those that quote limit orders at a fixed distance from the midprice.
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库存清算 Cos 的自适应最优做市策略
本文提出了一种新颖的离散时间高频做市方法,该方法允许闭式求解。通过利用与报价买卖价差呈线性关系且具有随机系数的需求函数,我们模拟了在限价订单簿(LOB)中发布的限价订单部分成交的可变性。因此,我们发现了需求的随机性如何影响最优配售策略的新模式。我们还允许价格过程遵循一般动态,而不采用文献中通常采用的布朗或马丁格尔假设。我们的最优配售策略最重要的特点是,它可以对在线市场订单的行为做出反应或适应。通过使用 LOB 数据,我们训练了模型,并利用 LOB 中的实际订单流重现了最优策略在给定测试日的预期最终盈亏。我们的自适应最优策略的表现优于非自适应策略,也优于那些以固定的中间价距离报价限价订单的策略。
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