用语法进化进化有效的限位顺序策略

Wei Cui, A. Brabazon, M. O’Neill
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引用次数: 6

摘要

交易执行涉及购买或出售所期望数量的金融工具的实际机制。交易执行中的一个实际问题是如何尽可能高效地交易大量订单。为此任务设计了一个交易执行策略,以最小化总交易成本。语法进化(GE)是一种进化的自动编程方法,可以用来进化规则集。在我们之前的工作中,它已被证明能够成功地发展高质量的交易执行策略。在本文中,通过采用两种不同的限价单生存期和三种基准限价单策略,扩展了之前的工作。利用通用电气来演化有效的限价订单策略,从而确定限价订单的侵略性水平。研究发现,通用电气发展的限价订单策略与三种基准策略相比具有较强的竞争力,且具有长期生命周期的限价订单策略优于具有短期生命周期的限价订单策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Evolving efficient limit order strategy using Grammatical Evolution
Trade execution is concerned with the actual mechanics of buying or selling the desired amount of a financial instrument of interest. A practical problem in trade execution is how to trade a large order as efficiently as possible. A trade execution strategy is designed for this task to minimize total trade cost. Grammatical Evolution (GE) is an evolutionary automatic programming methodology which can be used to evolve rule sets. It has been proved successfully to be able to evolve quality trade execution strategies in our previous work. In this paper, the previous work is extended by adopting two different limit order lifetimes and three benchmark limit order strategies. GE is used to evolve efficient limit order strategies which can determine the aggressiveness levels of limit orders. We found that GE evolved limit order strategies were highly competitive against three benchmark strategies and the limit order strategies with long-term lifetime performed better than those with short-term lifetime.
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