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Effect of Market Spread Over Reinforcement Learning Based Market Maker

机译:市场对基于加强学习的市场制造者的影响

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Market Making (also known as liquidity providing service) is a well-known trading problem studied in multiple disciplines including Finance, Economics and Artificial Intelligence. This paper examines the impact of Market Spread over the market maker's (or liquidity provider's) convergence ability through testing the hypothesis that "Knowledge of market spread while learning leads to faster convergence to an optimal and less volatile market making policy". Reinforcement Learning was used to mimic the behaviour of a liquidity provider with Limit Order Book using historical Trade and Quote data of five equities, as the trading environment. An empirical study of results obtained from experiments (comparing our reward function with benchmark) shows significant improvement in the magnitude of returns obtained by a market maker with knowledge of market spread compared to a market maker without such knowledge, which proves our stated hypothesis.
机译:市场制作(也称为流动性提供服务)是在多个学科中研究的着名交易问题,包括金融,经济和人工智能。本文通过测试“市场传播知识导致更快地融合了最佳且不稳定的市场制作政策”的假设,研究市场对市场制造商(或流动资金提供商)收敛能力的影响,通过测试“市场传播的知识,以更快地融入最佳且较不稳定的市场制作政策”的假设来审查市场制造商的(或流动性提供者)的收敛能力。钢筋学习用于模仿流动性提供者的行为,利用五个股票的历史贸易和引用数据作为交易环境的历史贸易和引用数据。从实验中获得的结果(比较我们的奖励功能与基准测试)的实证研究表明,由市场制造商的市场传播知识获得的市场制造商获得的收益幅度的显着改善,没有这种知识,这证明了我们所说的假设。

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