暗池智能订单路由:一种组合多臂强盗方法

Martino Bernasconi, S. Martino, Edoardo Vittori, F. Trovò, Marcello Restelli
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引用次数: 0

摘要

我们研究了开发一个智能订单路由算法的问题,该算法学习如何优化美元交易量,即交易股票的总价值,通过在多个暗池中切片订单获得。我们的工作是由两个不同的问题驱动的:(i)由于电子交易的日益普及和交易场所数量的增加而导致的流动性碎片化激增,以及(ii)以缺乏透明度为特征的交易场所黑池的普及。本文批判性地讨论了已知的暗池文献,并提出了一种新的算法,即DP-CMAB算法,该算法通过允许代理在下订单时指定期望的限价来扩展现有的解决方案。具体来说,我们将多场所环境下的美元数量优化问题定义为组合多臂强盗(CMAB)问题,代表了已经得到充分研究的MAB框架的推广。从丰富的MAB和CMAB文献中,我们提出了我们的算法可能采用的多种策略来选择最佳分配选项。此外,我们还分析了利用金融领域知识如何提高代理的绩效。最后,我们在基于真实市场数据构建的环境中评估了DP-CMAB的性能,并表明我们的算法优于最先进的解决方案。
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Dark-Pool Smart Order Routing: a Combinatorial Multi-armed Bandit Approach
We study the problem of developing a Smart Order Routing algorithm that learns how to optimize the dollar volume, i.e., the total value of the traded shares, gained from slicing an order across multiple dark pools. Our work is motivated by two distinct issues: (i) the surge in liquidity fragmentation caused by the rising popularity of electronic trading and by the increasing number of trading venues, and (ii) the growth in popularity of dark pools, an exchange venue characterised by a lack of transparency. This paper critically discusses the known dark pool literature and proposes a novel algorithm, namely the DP-CMAB algorithm, that extends existing solutions by allowing the agent to specify the desired limit price when placing orders. Specifically, we frame the problem of dollar volume optimization in a multi-venue setting as a Combinatorial Multi-Armed Bandit (CMAB) problem, representing a generalization of the well-studied MAB framework. Drawing from the rich MAB and CMAB literature, we present multiple strategies that our algorithm may adopt to select the best allocation options. Furthermore, we analyze how exploiting financial domain knowledge improves the agents’ performance. Finally, we evaluate the DP-CMAB performance in an environment built from real market data and show that our algorithm outperforms state-of-the-art solutions.
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