用动态机器学习方法发现电子金融市场的生态系统

Shawn Mankad, G. Michailidis, A. Kirilenko
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引用次数: 18

摘要

不久以前,证券是由人类交易员在面对面的市场上交易的。公开叫价市场的生态系统是众所周知的,肉眼可见,并有严格的规定。现在越来越多的交易在匿名的电子市场中进行,交易者没有指定的功能或强制性的角色。事实上,交易员本身已经被算法(机器)取代,在很少或根本没有人为监督的情况下运作。虽然电子交易的过程对人眼来说是不可见的,但已经开发出机器学习方法来识别数据中的持久模式。在本研究中,我们开发了一种动态机器学习方法,将匿名电子市场中的交易者分为五类:高频交易者、做市商、机会主义交易者、基本交易者和小型交易者。我们的方法扩展了格子聚类技术,使用平滑框架过滤瞬态模式。该方法快速、稳健,适合在大量电子市场中发现交易生态系统
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovering the Ecosystem of an Electronic Financial Market with a Dynamic Machine-Learning Method
Not long ago securities were traded by human traders in face-to-face markets. The ecosystem of an open outcry market was well-known, visible to a human eye, and rigidly prescribed. Now trading is increasingly done in anonymous electronic markets where traders do not have designated functions or mandatory roles. In fact, the traders themselves have been replaced by algorithms (machines) operating with little or no human oversight. While the process of electronic trading is not visible to a human eye, machine-learning methods have been developed to recognize persistent patterns in the data. In this study, we develop a dynamic machine-learning method that designates traders in an anonymous electronic market into five persistent categories: high frequency traders, market makers, opportunistic traders, fundamental traders, and small traders. Our method extends a plaid clustering technique with a smoothing framework that filters out transient patterns. The method is fast, robust, and suitable for a discovering trading ecosystems in a large number of electronic markets
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