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Learning unfair trading: A market manipulation analysis from the reinforcement learning perspective

机译:学习不公平交易:从强化学习的角度进行市场操纵分析

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Market manipulation is a strategy used by traders to alter the price of financial assets. One type of manipulation is based on the process of buying or selling assets by using several trading strategies, among them spoofing is a popular strategy and is considered illegal by market regulators. Some promising tools have been developed to detect price manipulation, but cases can still be found in the markets. In this paper we model spoofing and pinging trading from a macroscopic perspective of profit maximisation, two strategies that differ in the legal background but share the same elemental concept of market manipulation. We use a reinforcement learning framework within the full and partial observability of Markov decision processes and analyse the underlying behaviour of the perpetrators by finding the causes of what encourages these traders to perform fraudulent activities. Procedures can be applied to counter the problem as our model predicts the activity of the manipulators.
机译:市场操纵是交易者用来改变金融资产价格的策略。一种操纵是基于通过使用几种交易策略买卖资产的过程,其中欺骗是一种流行的策略,并且被市场监管机构视为非法。已经开发了一些有前途的工具来检测价格操纵,但是在市场上仍然可以找到案例。在本文中,我们从利润最大化的宏观角度对欺骗和ping交易进行建模,这两种策略的法律背景不同,但共享相同的市场操纵基本概念。我们在马尔可夫决策过程的全部和部分可观察性范围内使用强化学习框架,并通过找出导致这些交易者进行欺诈活动的原因来分析犯罪者的潜在行为。当我们的模型预测机械手的活动时,可以应用一些程序来解决问题。

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