论文标题
使用逆优化从投资组合中学习风险偏好
Learning Risk Preferences from Investment Portfolios Using Inverse Optimization
论文作者
论文摘要
现代投资组合理论(MPT)中的基本原则基于对绩效相关的投资组合风险的量化。尽管MPT对投资界产生了巨大影响,并促使被动投资的成功和流行率,但它仍然存在现实世界中的缺点。主要的挑战之一是,投资者可以承受的风险水平(称为\ emph {风险偏好})是一种主观选择,与决策中的心理学和行为科学密切相关。本文提出了一种新的方法,即使用对平均变化投资组合分配框架的逆优化来衡量现有投资组合的风险偏好。我们的方法使学习者可以使用并发观察到的投资组合和市场价格数据不断估计实时风险偏好。我们展示了我们的真实市场数据的方法,该数据包括20年的资产定价和十年的共同基金投资组合持有量。此外,量化的风险偏好参数已通过目前在现场应用的两个众所周知的风险测量来验证。提出的方法可能会导致自动化/个性化投资组合管理(例如机器人审议)的实践和富有成果的创新,以在长期投资视野中增强财务顾问的决策情报。
The fundamental principle in Modern Portfolio Theory (MPT) is based on the quantification of the portfolio's risk related to performance. Although MPT has made huge impacts on the investment world and prompted the success and prevalence of passive investing, it still has shortcomings in real-world applications. One of the main challenges is that the level of risk an investor can endure, known as \emph{risk-preference}, is a subjective choice that is tightly related to psychology and behavioral science in decision making. This paper presents a novel approach of measuring risk preference from existing portfolios using inverse optimization on the mean-variance portfolio allocation framework. Our approach allows the learner to continuously estimate real-time risk preferences using concurrent observed portfolios and market price data. We demonstrate our methods on real market data that consists of 20 years of asset pricing and 10 years of mutual fund portfolio holdings. Moreover, the quantified risk preference parameters are validated with two well-known risk measurements currently applied in the field. The proposed methods could lead to practical and fruitful innovations in automated/personalized portfolio management, such as Robo-advising, to augment financial advisors' decision intelligence in a long-term investment horizon.