激励金融市场的做市行为

Ji Qi, Carmine Ventre
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引用次数: 0

摘要

在追求利润的过程中,做市商提供流动性,因此对金融市场的健康发挥着根本作用。在订单驱动的市场中,用于对买入价和卖出价进行排序的机制可能会影响交易员的行为,抑制做市行为,对市场基本面产生明显影响。这是市场交易机制背后的基本原理,该机制为双边订单价差和订单价格赋予权重。在这项工作中,我们从博弈论的角度评估了这一建议的有效性。我们使用战略代理并明确定义了一个效用函数,该函数将交易者成为做市商的概率视为纯粹的策略。然后,我们运用经验博弈论分析来分析均衡状态下的市场;我们说明了对不同匹配机制设置的战略反应,如何激励代理人成为做市商,代理人行为和市场状态。我们的分析表明,这种基于价差的优先级可以很好地减少市场波动并保持交易量,只要使用适当的设置,即权衡价差排名和价格排名。
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Incentivising Market Making in Financial Markets
In their pursue for profit, market makers contribute liquidity and thus play a fundamental role for the health of financial markets. The mechanism used to rank bids and asks in order-driven markets can influence trader behaviour and discourage market making, with obvious consequences on market fundamentals. This is the rationale behind market trading mechanisms, which assign weight to both the spread of two-sided orders and order prices. In this work, we assess the effectiveness of this proposal from a game-theoretic standpoint. We use strategic agents and explicitly define a utility function that treats the probability of a trader becoming a market maker as a pure strategy. We then employ empirical game-theoretic analysis to analyse the market at equilibrium; we illustrate the strategic responses to different setups of the matching mechanisms, how agents are incentivised to become market makers, agent behaviour and market states. Our analysis shows that this spread-based priority works well to reduce market volatility and maintain trading volume, provided that an appropriate setting is used, which weighs spread ranking and price ranking .
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