A study of dark pool trading using an agent-based model

Sheung Yin Kevin Mo, M. Paddrik, Steve Y. Yang
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引用次数: 15

Abstract

A dark pool is a securities trading venue with no published market depth feed. Such markets have traditionally been utilized by large institutions as an alternative to public exchanges to execute large block orders which might otherwise impact settlement price. It is estimated that the trading volume of dark pool markets was 9% to 12% of the total U.S. equity market share volume in 2010 [1]. This phenomenon raises questions regarding the fundamental value of securities traded through dark pool markets and their impact on the price discovery process in traditional “visible” markets. In this paper, we establish a modeling framework for dark pool markets through agent-based modeling. It presents and validates the costs and benefits of trading small orders in dark pool markets. Simulated trading of 78 selected stocks demonstrates that dark pool market traders can obtain better execution rate when the dark pool market has more uninformed traders relative to informed traders. In addition, trading stocks with larger market capitalization yields better price improvement in dark pool markets.
基于代理模型的暗池交易研究
暗池是指没有公开市场深度信息的证券交易场所。传统上,这些市场被大型机构用作公共交易所的替代方案,以执行可能影响结算价格的大宗订单。据估计,2010年暗池市场的交易量占美国股票市场总交易量的9% - 12%[1]。这一现象引发了人们对通过暗池市场交易的证券的基本价值及其对传统“可见”市场价格发现过程的影响的质疑。本文通过基于agent的建模方法,建立了暗池市场的建模框架。它展示并验证了在暗池市场交易小额订单的成本和收益。78只股票的模拟交易表明,当暗池市场中不知情的交易者多于知情的交易者时,暗池市场的交易者可以获得更好的执行率。此外,在暗池市场中,交易市值较大的股票会产生更好的价格改善。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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