Strategic Markowitz Portfolio Optimization (SMPO): A Portfolio Return Booster

Navoneel Chakrabarty, Sanket Biswas
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引用次数: 5

Abstract

In Financial Data Science and more specifically in Investment Analytics, Portfolio Optimization is a very crucial aspect. A portfolio consisting of a collection of securities, has certain weights assigned to each security. Banking on these weights, the overall Portfolio Return and Risk are determined. Investors always try to find the Optimized Portfolio by adjusting the weightage given to each security in the portfolio. In this paper, a diverse, practical and exemplar portfolio, also having tint of similarity among securities, is considered. It has stocks from 8 companies (not from or any particular market indices): General Motors (GM), Ford Motor Company (F), Cognizant (CTS), International Business Machines Corporation (IBM), Apple Technology Company (AAPL), Vivo (VIVO), Under Armour (UAA) and Nike (NKE). The Optimized Portfolio is constructed with adjusted weightage for each company in the portfolio using Strategic Markowitz Portfolio Optimization (SMPO). The obtained Optimized Portfolio yielded a Logarithmic Portfolio Return of 0.04268 at minimum Risk (Standard Deviation) of 0.14951 and maximum possible Logarithmic Return of 0.15873 at a Risk (Standard Deviation) of 0.17938. Using the Markowitz Portfolio Optimization in a strategic manner for such portfolio where there is diversity along with different shades of similarity, can fetch more Optimized Portfolio than obtained by the Classical approach of Markowitz Portfolio Optimization.
战略马科维茨投资组合优化(SMPO):投资组合回报的助推器
在金融数据科学中,更具体地说,在投资分析中,投资组合优化是一个非常关键的方面。投资组合由一系列证券组成,每种证券都有一定的权重。根据这些权重,可以确定整个投资组合的收益和风险。投资者总是试图通过调整投资组合中每种证券的权重来找到优化的投资组合。本文考虑的是一个多样化、实用且具有示范性的投资组合,该组合中的证券也具有相似性。该投资组合包含 8 家公司的股票(并非来自任何特定市场指数):通用汽车公司(GM)、福特汽车公司(F)、Cognizant(CTS)、国际商用机器公司(IBM)、苹果科技公司(AAPL)、Vivo(VIVO)、Under Armour(UAA)和耐克(NKE)。利用战略马科维茨投资组合优化法(SMPO),对投资组合中每家公司的权重进行了调整,从而构建了优化投资组合。优化组合的对数回报率为 0.04268,最低风险(标准偏差)为 0.14951,最高可能对数回报率为 0.15873,风险(标准偏差)为 0.17938。在这种既有多样性又有不同相似度的投资组合中,战略性地使用马科维茨投资组合优化法可以获得比经典的马科维茨投资组合优化法更高的优化组合。
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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