Abstract

This study uses the hidden Markov model (HMM) to identify the phases of individual assets and proposes an investment strategy using price trends effectively. We conducted empirical analysis for 15 years from January 2004 to December 2018 on universes of global assets divided into 10 classes and the more detailed 22 classes. Both universes have been shown to have superior performance in strategy using HMM in common. By examining the change in the weight of the portfolio, the weight change between the asset classes occurs dynamically. This shows that HMM increases the weight of stocks when stock price rises and increases the weight of bonds when stock price falls. As a result of analyzing the performance, it was shown that the HMM effectively reflects the asset selection effect in Jensen’s alpha, Fama’s Net Selectivity and Treynor-Mazuy model. In addition, the strategy of the HMM has positive gamma value even in the Treynor-Mazuy model. Ultimately, HMM is expected to enable stable management compared to existing momentum strategies by having asset selection effect and market forecasting ability.

Highlights

  • When it comes to asset allocation, it is a very important consideration to predict the price movement of the investment target

  • The purpose of this study is to investigate whether the use of the artificial intelligence method can improve portfolio performance empirically for global asset allocation

  • We propose a method of asset allocation using the Hidden Markov Model (HMM)

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Summary

Introduction

When it comes to asset allocation, it is a very important consideration to predict the price movement of the investment target. This move is related to the phenomenon of price momentum. Freitas et al (2009) showed that a prediction-based portfolio optimization model using neural networks can capture short investment opportunities and outperform the mean-variance model. The purpose of this study is to investigate whether the use of the artificial intelligence method can improve portfolio performance empirically for global asset allocation. We propose a method of asset allocation using the Hidden Markov Model (HMM).

Asset Allocation
Momentum Investing
Data Source
Markov Chain
Hidden Markov Model
HMM Parameter Learning
Information Ratio
Jensen’s Alpha
Fama’s Net Selectivity
Treynor-Mazuy Measure
Empirical Analysis
Global Asset Allocation Investment Universe
Validation of Selection Effect of HMM
Conclusions
Full Text
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