Expansion of Stock Portfolio Risk Analysis Using Hybrid Monte Carlo-Expected Tail Loss

Wisnowan Hendy Saputra, Ika Safitri
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Abstract

Monte Carlo-Expected Tail Loss (MC-ETL) is the new expansion method that combines simulation and calculation to measure investment risk. This study models US stock prices using ARIMA-GARCH and forms an optimized portfolio based on Multi-Objective that aims to analyze the portfolio investment return. The next portfolio return will be simulated using the Monte Carlo (MC) method, measured based on the Expected Tail Loss (ETL) calculation. The optimized portfolio comprises 5 US stocks from 10 years of data, with the biggest capitalization market on February 25, 2021. MSFT has the most considerable weight in the optimized portfolio, followed by GOOG, AAPL, and AMZN, whereas TSLA shares have negligible weight. Based on the simulation result, the optimized portfolio has the smallest ETL value compared to its constituent stocks, which is ±0.029 or about 2.9%. This value means that the optimized portfolio is concluded as an investment choice for investors with a low level of risk.
基于混合蒙特卡罗-期望尾损失的股票投资组合风险分析扩展
Monte Carlo-Expected Tail Loss (MC-ETL)是一种将模拟与计算相结合的新型投资风险度量展开方法。本研究使用ARIMA-GARCH对美国股票价格进行建模,并基于多目标的优化组合,分析组合投资收益。下一次投资组合收益将使用蒙特卡罗(MC)方法进行模拟,并基于预期尾部损失(ETL)计算进行测量。优化后的投资组合包括5只10年数据的美国股票,市值最大的市场是2021年2月25日。在优化后的投资组合中,微软的权重最大,其次是谷歌、苹果和亚马逊,而特斯拉的权重可以忽略不计。从模拟结果来看,优化后的投资组合相对于成分股的ETL值最小,为±0.029,约为2.9%。该值表示优化后的投资组合是风险水平较低的投资者的投资选择。
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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