面对市场操纵时基于学习的交易策略

Xintong Wang, Christopher Hoang, M. Wellman
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引用次数: 4

摘要

我们研究了市场中基于学习的交易策略,在这些市场中,价格可以通过欺骗来操纵:通过提交虚假订单来误导使用市场信息的交易者。为了减少学习型交易者对此类操纵的脆弱性,我们提出了基于标准启发式信念学习(HBL)交易策略的两种变体,该策略从订单簿中观察到的市场活动中学习交易概率。第一种变化选择性地忽略某些价格水平的订单,特别是在可能出现欺诈订单的情况下。第二种考虑完整的订单簿,但调整其限价订单价格,以纠正基于学习的启发式信念的决策偏差。我们采用基于主体的模拟来评估这些变化的两个标准:非操纵市场的有效性和对操纵的鲁棒性。背景交易者可以采用(非学习)零智能策略或HBL,其基本形式或两种变体。我们对模拟收益进行了实证博弈论分析,以得出近似的战略均衡,并比较了各种交易环境下的均衡结果。结果表明,代理可以策略性地利用阻止订单的选项来提高对欺骗的鲁棒性,同时在非操纵市场中保持相当的竞争力。在有和没有操纵的市场中,我们的第二种HBL变异表现出比标准HBL总体上的改善。进一步的研究表明,通过结合这两种建议的变化,交易者可以同时享受到提高的盈利能力和稳健性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Learning-based trading strategies in the face of market manipulation
We study learning-based trading strategies in markets where prices can be manipulated through spoofing: the practice of submitting spurious orders to mislead traders who use market information. To reduce the vulnerability of learning traders to such manipulation, we propose two variations based on the standard heuristic belief learning (HBL) trading strategy, which learns transaction probabilities from market activities observed in an order book. The first variation selectively ignores orders at certain price levels, particularly where spoof orders are likely to be placed. The second considers the full order book, but adjusts its limit order price to correct for bias in decisions based on the learned heuristic beliefs. We employ agent-based simulation to evaluate these variations on two criteria: effectiveness in non-manipulated markets and robustness against manipulation. Background traders can adopt the (non-learning) zero intelligence strategies or HBL, in its basic form or the two variations. We conduct empirical game-theoretic analysis upon simulated payoffs to derive approximate strategic equilibria, and compare equilibrium outcomes across a variety of trading environments. Results show that agents can strategically make use of the option to block orders to improve robustness against spoofing, while retaining a comparable competitiveness in non-manipulated markets. Our second HBL variation exhibits a general improvement over standard HBL, in markets with and without manipulation. Further explorations suggest that traders can enjoy both improved profitability and robustness by combining the two proposed variations.
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