Food Sector Stock Investment Portfolio Optimization using Mean-Expected Shortfall Model with Particle Swarm Optimization

Carlos Naek Tua Tampubolon, Betty Subartini, Sukono Sukono
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Abstract

One of the most promising investment products is stocks. Stocks have great profit potential, but the risks associated with this investment should not be ignored by investors. Therefore, an optimal investment strategy is needed by forming an investment portfolio, in order to minimize risk and maximize profits that can be obtained. This study aims to optimize the investment portfolio. The method used in this research is based on the Mean-Expected Shortfall (Mean-ES) model. The use of this method is expected that investors can get a more accurate picture of the level of risk associated with their stock portfolio. In addition, Particle Swarm Optimization (PSO) can also be used to optimize the allocation of funds in a stock portfolio. Applying PSO, investors can find the optimal combination of fund allocation to achieve a high level of return. Based on the results of the analysis conducted on the following five stocks AALI, BISI, DSNG, LSIP and SMAR, the results show a risk level of 0.0014 and a return level of 0.021%. Thus, investors can form a stock portfolio that has a high potential return, while minimizing the risks associated with stock investment. The implementation of this optimal investment strategy can assist investors in achieving their financial goals in a more effective manner. Considering the potential returns and risks involved, investors can make wiser investment decisions and optimize the performance of their stock portfolio.
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基于粒子群优化平均-期望缺口模型的食品行业股票投资组合优化
最有前途的投资产品之一是股票。股票具有巨大的盈利潜力,但与此相关的风险不容投资者忽视。因此,需要一个最优的投资策略,形成投资组合,使风险最小化,利润最大化。本研究旨在优化投资组合。本研究使用的方法是基于Mean-Expected shortage (Mean-ES)模型。使用这种方法,预期投资者可以更准确地了解与其股票投资组合相关的风险水平。此外,粒子群算法(PSO)也可用于股票投资组合的资金配置优化。运用粒子群算法,投资者可以找到最优的资金配置组合,从而获得较高的收益水平。根据对AALI、BISI、DSNG、LSIP和SMAR这5只股票的分析结果,其风险水平为0.0014,收益水平为0.021%。因此,投资者可以形成一个具有高潜在回报的股票投资组合,同时最小化与股票投资相关的风险。这种最优投资策略的实施可以帮助投资者以更有效的方式实现其财务目标。考虑到潜在的回报和风险,投资者可以做出更明智的投资决策,优化他们的股票投资组合的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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