Maximum Entropy Bi-Objective Model and its Evolutionary Algorithm for Portfolio Optimization

Chun-an Liu, Qian Lei, H. Jia
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Abstract

Diversification of investment is a well-established practice for reducing the total risk of investing. Portfolio optimization is an effective way for investors to disperse investment risk and increase portfolio return. Under the assumption of no short selling, a bi-objective minimizing portfolio optimization model, in which the first objective is a semi-absolute deviation mean function used to measure the portfolio risk, and the second objective is a maximum entropy smooth function used to measure the portfolio return, is given in this paper. Also, a maximum entropy multi-objective evolutionary algorithm is designed to solve the bi-objective portfolio optimization model. In order to obtain a sufficient number of uniformly distributed portfolio Pareto optimal solutions located on the true Pareto frontier and fully exploit the useful asset combination modes which can lead the search process toward the frontier direction quickly in the objective space, a subspace multi-parent uniform crossover operator and a subspace decomposition mutation operator are given. Furthermore, a normalization method to deal with the tight constraint and the convergence analysis of the proposed algorithm are also discussed. Finally, the performance of the proposed algorithm is verified by five benchmark investment optimization problems. The performance evaluations and results analyses illustrate that the proposed algorithm is capable of identifying good Pareto solutions and maintaining adequate diversity of the evolution population. Also, the proposed algorithm can obtain faster and better convergence to the true portfolio Pareto frontier compared with the three state-of-the-art multi-objective evolutionary algorithms. The result can also provide optimal portfolio plan and investment strategy for investors to allocate and manage asset effectively.
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投资组合优化的最大熵双目标模型及其进化算法
分散投资是一种行之有效的做法,可以减少投资的总风险。投资组合优化是投资者分散投资风险、提高投资组合收益的有效途径。在不卖空的假设下,给出了一个双目标最小化投资组合优化模型,其中第一目标是用于度量投资组合风险的半绝对偏差均值函数,第二目标是用于度量投资组合收益的最大熵平滑函数。同时,设计了一种最大熵多目标进化算法来求解双目标投资组合优化模型。为了获得足够数量的分布在真Pareto边界上的均匀分布组合Pareto最优解,并充分利用在目标空间中使搜索过程快速向边界方向移动的有用资产组合模式,给出了子空间多父一致交叉算子和子空间分解变异算子。此外,还讨论了处理紧约束的归一化方法和算法的收敛性分析。最后,通过五个基准投资优化问题验证了所提算法的性能。性能评估和结果分析表明,该算法能够识别出良好的Pareto解,并保持进化种群的足够多样性。同时,与现有的三种多目标进化算法相比,该算法能够更快更好地收敛于真组合Pareto边界。研究结果还可以为投资者有效配置和管理资产提供最优的投资组合计划和投资策略。
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