Stock portfolio optimization in fireworks algorithm using risk value and comparison with Particle Swarm Optimization (PSO)

Ali Asghar Shahriari, Saeed Daei- Karimzadeh, R. Behmanesh
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Abstract

The nature of business and investment activities is such that earning a return requires risk tolerance. Choosing a stock portfolio is a difficult and difficult task that the investor sees in the face of the many and varied choices that she must choose as one of the best methods. The present study deals with the problem of stock portfolio optimization according to the Value at Risk based intelligent fireworks algorithm and compares it with Particle Swarm Optimization algorithm with the historical simulation method using MATLAB software. The parameters of meta-heuristic algorithms were adjusted by Taguchi method using MINITAB software. Not suspended, used. For reliability of the study, generalized Dickey-Fuller test and PhillipsProne test were used. To evaluate the accuracy of the Conditional Value at Risk model, the kupiec proportion of failure test, Christoffersen independence test and Conditional coverage test are used. A comparison was also made between the models by Lopez test. The execution time of the Particle Swarm Optimization was less than that of the fireworks algorithm at all three levels of confidence, but the convergence speed of the fireworks algorithm was faster than that of the Particle Swarm Optimization at all levels. Findings showed that the Value at Risk model using the fireworks algorithm, despite the longer execution time due to better convergence speed and higher rank of Lopez test has a more appropriate validity for stock portfolio optimization.
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基于风险值的烟花算法股票组合优化及其与粒子群算法的比较
商业和投资活动的性质决定了获得回报需要风险承受能力。选择一个股票投资组合是一个困难和困难的任务,投资者看到面对许多不同的选择,她必须选择最好的方法之一。本文研究了基于风险值的智能烟花算法的股票投资组合优化问题,并利用MATLAB软件将其与粒子群优化算法进行了历史仿真比较。采用MINITAB软件对元启发式算法参数进行田口法调整。不是暂停,是使用。为提高研究的信度,采用了广义Dickey-Fuller检验和PhillipsProne检验。为了评估条件风险值模型的准确性,使用了失效比例测试、Christoffersen独立性测试和条件覆盖率测试。采用Lopez检验对模型进行了比较。在所有三个置信度水平上,粒子群算法的执行时间都小于烟花算法,但烟花算法在所有水平上的收敛速度都快于粒子群算法。研究结果表明,尽管烟花算法的风险值模型由于收敛速度更快,执行时间更长,洛佩兹检验等级更高,但对股票投资组合优化具有更合适的有效性。
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