The Effect of Energy Cryptos on Efficient Portfolios of Key Energy Companies in the S&P Composite 1500 Energy Index

Ikhlaas Gurrib, Elgilani Elshareif, Firuz Kamalov
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引用次数: 3

Abstract

The purpose of this paper is to investigate if energy block chain based cryptocurrencies can help diversify equity portfolios consisting primarily of leading energy companies in the US S&P Composite 1500 Energy Index. The key contributions are firstly, in terms of assessing the importance of energy cryptos as alternative investments in portfolio management, and secondly, whether different volatility models such as Autoregressive Moving Average – Generalized Autoregressive Heteroskedasticity (ARMA-GARCH) and Machine Learning (ML) can help investors make better informed decisions in investments. The methodology utilizes the traditional Markowitz mean-variance framework to obtain optimized portfolio risk and return combinations. Different volatility measures, derived from the Cornish-Fisher adjusted variance, ARMA family classes and machine learning models are used to compare efficient portfolios which include or exclude the energy cryptos. To capture the negative performance of cryptos, the study also analyses the effect of adding cryptos to equity portfolios with non-positive excess returns. The different models are assessed using the Sharpe performance measure. Daily data is used, spanning from 21st November 2017 to 31st January 2019. Findings suggest that the energy based cryptos do not have a significant impact on energy equity portfolios, despite the use of different risk measures. This was attributable to the relatively poor performance of energy cryptos which did not contribute in improving the excess return per unit of risk of efficient portfolios based on the leading US energy stocks.
能源加密对标准普尔1500能源指数中主要能源公司有效投资组合的影响
本文的目的是研究基于能源区块链的加密货币是否可以帮助分散主要由美国标准普尔1500能源指数中的领先能源公司组成的股票投资组合。主要贡献首先是评估能源加密作为投资组合管理中替代投资的重要性,其次是不同的波动率模型,如自回归移动平均-广义自回归异方差(ARMA-GARCH)和机器学习(ML)是否可以帮助投资者在投资中做出更明智的决策。该方法利用传统的马科维茨均值-方差框架来获得最优的投资组合风险和收益组合。使用来自Cornish-Fisher调整方差、ARMA家族类和机器学习模型的不同波动率度量来比较包括或不包括能源加密的有效投资组合。为了捕捉加密货币的负面表现,该研究还分析了将加密货币加入非正超额回报的股票投资组合的影响。使用夏普性能度量来评估不同的模型。每日数据使用,从2017年11月21日到2019年1月31日。研究结果表明,尽管使用了不同的风险衡量标准,但基于能源的加密货币对能源股票投资组合没有显著影响。这是由于能源加密货币的表现相对较差,这无助于提高基于美国主要能源股的有效投资组合的单位风险超额回报。
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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