Abstract

In the field of asset allocation, how to balance the returns of an investment portfolio and its fluctuations is the core issue. Capital asset pricing model, arbitrage pricing theory, and Fama–French three-factor model were used to quantify the price of individual stocks and portfolios. Based on the second-order stochastic dominance rule, the higher moments of return series, the Shannon entropy, and some other actual investment constraints, we construct a multiconstraint portfolio optimization model, aiming at comprehensively weighting the returns and risk of portfolios rather than blindly maximizing its returns. Furthermore, the whale optimization algorithm based on FTSE100 index data is used to optimize the above multiconstraint portfolio optimization model, which significantly improves the rate of return of the simple diversified buy-and-hold strategy or the FTSE100 index. Furthermore, extensive experiments validate the superiority of the whale optimization algorithm over the other four swarm intelligence optimization algorithms (gray wolf optimizer, fruit fly optimization algorithm, particle swarm optimization, and firefly algorithm) through various indicators of the results, especially under harsh constraints.

Highlights

  • In the field of finance, the portfolio optimization problem has drawn a lot of attention since the mean-variance (M-V) model was proposed by Markowitz [1]

  • Whale optimization algorithm (WOA) was tested for 29 mathematical optimization problems and 6 structural design problems, and the results prove that WOA is very competitive with the existing metaheuristic algorithms as well as conventional methods. e most important is that WOA mainly mimics the hunting behavior of humpback whales in searching for and attacking preys called the bubble-net feeding behavior [27], which improved the performance of candidate solutions in each step

  • WOA is a swarm intelligence optimization algorithm proposed by Australian scholars Mirjalili and Lewis [26] in 2016. e algorithm simulates the process of humpback whales searching and capturing food by establishing mathematical models

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Summary

Introduction

In the field of finance, the portfolio optimization problem has drawn a lot of attention since the mean-variance (M-V) model was proposed by Markowitz [1]. Reddy et al [33] applied WOA to profit-based unit commitment problems in competitive electricity markets with good performance. In these papers, WOA has still not been applied to solving the multiconstraint SSD portfolio optimization model. E motivation for proposing WOA for the multiconstraint SSD portfolio optimization model in this research is twofold. A new improved multiconstraint SSD portfolio optimization model is proposed and optimized by WOA. We incorporate several realistic constraints into the SSD portfolio optimization model, including the transaction cost, skewness, kurtosis, diversification, and boundary constraints.

The Multiconstraint Portfolio Optimization Model
Numerical Experiments
Conclusion
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