Learning Risk Preferences from Investment Portfolios Using Inverse
Optimization
- URL: http://arxiv.org/abs/2010.01687v3
- Date: Fri, 12 Feb 2021 17:15:38 GMT
- Title: Learning Risk Preferences from Investment Portfolios Using Inverse
Optimization
- Authors: Shi Yu, Haoran Wang, Chaosheng Dong
- Abstract summary: This paper presents a novel approach of measuring risk preference from existing portfolios using inverse optimization.
We demonstrate our methods on real market data that consists of 20 years of asset pricing and 10 years of mutual fund portfolio holdings.
- Score: 25.19470942583387
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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