公司债券交易的强化学习:卖方视角

Samuel Atkins, Ali Fathi, Sammy Assefa
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引用次数: 0

摘要

典型的卖方机构(如银行)中的公司债券交易员通过买入/卖出证券和维持库存为市场参与者提供流动性。在收到买入/卖出报价请求(RFQ)后,交易员会在报价上加上一个价差(textit{prevalentmarket price})。对于非流动性债券,市场价格更难观察,交易商通常会求助于现有的基准债券价格(如 MarketAxess、彭博等)。在《Bergault2023ModelingLI》一书中,引入了非流动性公司债券的 "公平转让价格"(FairTransfer Price)概念,该概念来自于一个无限期随机最优控制问题(最大化交易者的预期收益,并通过二次变化正则化)。在本文中,我们考虑了相同的优化目标,但是,我们以数据驱动的方式来估计最优买卖价差报价策略,并证明可以使用强化学习来学习该策略。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learning for Corporate Bond Trading: A Sell Side Perspective
A corporate bond trader in a typical sell side institution such as a bank provides liquidity to the market participants by buying/selling securities and maintaining an inventory. Upon receiving a request for a buy/sell price quote (RFQ), the trader provides a quote by adding a spread over a \textit{prevalent market price}. For illiquid bonds, the market price is harder to observe, and traders often resort to available benchmark bond prices (such as MarketAxess, Bloomberg, etc.). In \cite{Bergault2023ModelingLI}, the concept of \textit{Fair Transfer Price} for an illiquid corporate bond was introduced which is derived from an infinite horizon stochastic optimal control problem (for maximizing the trader's expected P\&L, regularized by the quadratic variation). In this paper, we consider the same optimization objective, however, we approach the estimation of an optimal bid-ask spread quoting strategy in a data driven manner and show that it can be learned using Reinforcement Learning. Furthermore, we perform extensive outcome analysis to examine the reasonableness of the trained agent's behavior.
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