Deep Learning can Replicate Adaptive Traders in a Limit-Order-Book Financial Market

A. L. Calvez, D. Cliff
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引用次数: 18

Abstract

We report successful results from using deep learning neural networks (DLNNs) to learn, purely by observation, the behavior of profitable traders in an electronic market closely modelled on the limit-order-book (LOB) market mechanisms that are commonly found in the real-world global financial markets for equities (stocks & shares), currencies, bonds, commodities, and derivatives. Successful real human traders, and advanced automated algorithmic trading systems, learn from experience and adapt over time as market conditions change; our DLNN learns to copy this adaptive trading behavior. A novel aspect of our work is that we do not involve the conventional approach of attempting to predict time-series of prices of tradeable securities. Instead, we collect large volumes of training data by observing only the quotes issued by a successful sales-trader in the market, details of the orders that trader is executing, and the data available on the LOB (as would usually be provided by a centralized exchange) over the period that the trader is active. In this paper we demonstrate that suitably configured DLNNs can learn to replicate the trading behavior of a successful adaptive automated trader, an algorithmic system previously demonstrated to outperform human traders. We also demonstrate that DLNNs can learn to perform better (i.e., more profitably) than the trader that provided the training data. We believe that this is the first ever demonstration that DLNNs can successfully replicate a human-like, or super-human, adaptive trader operating in a realistic emulation of a real-world financial market. Our results can be considered as proof-of-concept that a DLNN could, in principle, observe the actions of a human trader in a real financial market and over time learn to trade equally as well as that human trader, and possibly better.
深度学习可以在限购金融市场中复制自适应交易者
我们报告了使用深度学习神经网络(DLNNs)纯粹通过观察来学习电子市场中盈利交易者的行为的成功结果,该电子市场密切模仿了在现实世界的全球金融市场中常见的股票(股票和股份)、货币、债券、商品和衍生品的限价订单(LOB)市场机制。成功的真人交易者和先进的自动算法交易系统,从经验中学习,并随着时间的推移适应市场条件的变化;我们的DLNN学会了复制这种适应性交易行为。我们工作的新颖之处在于,我们没有采用传统的方法来试图预测可交易证券的时间序列价格。相反,我们只通过观察市场上成功的销售交易者发出的报价、交易者正在执行的订单的详细信息以及交易者活跃期间LOB上可用的数据(通常由集中交易所提供)来收集大量的培训数据。在本文中,我们证明了适当配置的dlnn可以学习复制成功的自适应自动交易者的交易行为,这是一种算法系统,以前被证明优于人类交易者。我们还证明了dlnn可以学习表现得比提供训练数据的交易者更好(即更有利可图)。我们认为,这是首次证明dlnn可以成功地复制一个类人或超人类的自适应交易员,在现实世界的金融市场中进行操作。我们的结果可以被视为概念证明,原则上,dln可以在真实的金融市场中观察人类交易者的行为,并随着时间的推移学习与人类交易者一样的交易,甚至可能更好。
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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