利用部分信息释放毒流

Alexander Barzykin, Robert Boyce, Eyal Neuman
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引用次数: 0

摘要

我们考虑的是一个中央交易台,该交易台汇集了客户的订单流入,这些订单具有无法观察到的毒性,即持续的不利方向性。该交易台选择将流入的订单内部化,还是以符合成本效益的方式将其外部化。在该模型中,订单流外部化既产生了价格影响成本,也为交易流入带来了额外的市场反馈反应。交易台的目标是在日终库存惩罚的前提下,实现每日交易损益的最大化。首先,我们推导出库存和毒性的过滤动态,并将其投射到观察到的过滤中,从而将随机控制问题转化为完全观察问题。然后,我们使用变分法推导出唯一的最优交易策略。我们将在不同的情况下对结果进行说明,在这些情况下,交易台面临的是动量和均值回复毒性。我们的实施结果表明,在所有测试场景中,部分可观测问题与完全信息情况下的损益表现差距都在 0.01 美元/%$。
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Unwinding Toxic Flow with Partial Information
We consider a central trading desk which aggregates the inflow of clients' orders with unobserved toxicity, i.e. persistent adverse directionality. The desk chooses either to internalise the inflow or externalise it to the market in a cost effective manner. In this model, externalising the order flow creates both price impact costs and an additional market feedback reaction for the inflow of trades. The desk's objective is to maximise the daily trading P&L subject to end of the day inventory penalization. We formulate this setting as a partially observable stochastic control problem and solve it in two steps. First, we derive the filtered dynamics of the inventory and toxicity, projected to the observed filtration, which turns the stochastic control problem into a fully observed problem. Then we use a variational approach in order to derive the unique optimal trading strategy. We illustrate our results for various scenarios in which the desk is facing momentum and mean-reverting toxicity. Our implementation shows that the P&L performance gap between the partially observable problem and the full information case are of order $0.01\%$ in all tested scenarios.
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