证券借贷市场的动态定价:代理放款人投资组合收入优化中的应用

Jing Xu, Yung Cheng Hsu, William Biscarri
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摘要

证券借贷是金融市场结构的重要组成部分,代理出借人帮助长期机构投资者将其证券借给卖空者,以换取借贷费用。市场中的代理出借人通过以尽可能高的利率出借证券来优化收益。通常情况下,这一比率由硬编码业务规则或标准监督机器学习模型设定。这些方法往往难以扩展,也无法适应不断变化的市场条件。与拥有集中限价订单簿的传统证券交易所不同,证券借贷市场的组织形式类似于电子商务市场,代理出借人和借款人可以以双边方式按任何商定的价格进行交易。这种相似性表明,在电子商务中使用典型的方法来解决动态定价问题,在证券借贷市场中也可能有效。我们的研究表明,现有的情境强盗框架可以成功地应用于证券借贷市场。通过对真实历史数据进行离线评估,我们发现情境匪帮法在总收益方面可以持续优于典型方法至少 15%。
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Dynamic Pricing in Securities Lending Market: Application in Revenue Optimization for an Agent Lender Portfolio
Securities lending is an important part of the financial market structure, where agent lenders help long term institutional investors to lend out their securities to short sellers in exchange for a lending fee. Agent lenders within the market seek to optimize revenue by lending out securities at the highest rate possible. Typically, this rate is set by hard-coded business rules or standard supervised machine learning models. These approaches are often difficult to scale and are not adaptive to changing market conditions. Unlike a traditional stock exchange with a centralized limit order book, the securities lending market is organized similarly to an e-commerce marketplace, where agent lenders and borrowers can transact at any agreed price in a bilateral fashion. This similarity suggests that the use of typical methods for addressing dynamic pricing problems in e-commerce could be effective in the securities lending market. We show that existing contextual bandit frameworks can be successfully utilized in the securities lending market. Using offline evaluation on real historical data, we show that the contextual bandit approach can consistently outperform typical approaches by at least 15% in terms of total revenue generated.
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