Portfolio Optimization Techniques for Cryptocurrencies

IF 0.6 Q4 BUSINESS, FINANCE
Samuel Gaskin, Rafay Kalim, Kelvin J. Wallace, David Islip, R. Kwon, J. Liew
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Abstract

This article addresses the shortcomings of the existing literature regarding cryptocurrency portfolio construction. First, we address the effectiveness of time-series models that capture stylized features. We perform a comparison study on various methods for estimating distributions for asset returns, including normal, historical, and GARCH models within a CVaR setting. The goal of this comparison is to determine the financial benefits of constructing portfolios based on estimated distributions that consider stylized features of crypto return series. Next, we create and compare various prediction models for cryptocurrencies and integrate them with mean-variance optimization to base performance on portfolio management metrics, such as Sharpe ratio and level of diversification, rather than statistical metrics like accuracy and R2 on which the literature solely focuses. We determine it is unclear which optimization approach (CVaR or Robust MVO) leads to better crypto portfolios, and so, to address this, we compare optimization procedures on out-of-sample data through a thorough cross-validation of hyperparameters for each technique. We then compare the resulting risk-optimal portfolios from each technique. The results show that a CVaR approach with a GARCH simulation and a decision tree prediction model with robust mean-variance optimization yield portfolios of similar risk. We also show that using statistical metrics to evaluate models may not always yield the best financial performance.
加密货币的投资组合优化技术
本文解决了关于加密货币投资组合构建的现有文献的缺点。首先,我们讨论了捕获程式化特征的时间序列模型的有效性。我们对估算资产收益分布的各种方法进行了比较研究,包括在CVaR设置下的正常、历史和GARCH模型。这种比较的目标是确定基于考虑加密收益序列风格化特征的估计分布构建投资组合的财务效益。接下来,我们创建并比较了加密货币的各种预测模型,并将其与均值方差优化相结合,以基于投资组合管理指标(如夏普比率和多样化水平)的性能,而不是文献仅关注的准确性和R2等统计指标。我们确定目前尚不清楚哪种优化方法(CVaR或鲁棒MVO)会带来更好的加密投资组合,因此,为了解决这个问题,我们通过对每种技术的超参数进行彻底的交叉验证,比较了样本外数据的优化程序。然后,我们比较从每种技术得到的风险最优投资组合。结果表明,基于GARCH模拟的CVaR方法和基于稳健均值方差优化的决策树预测模型具有相似风险的收益组合。我们还表明,使用统计指标来评估模型可能并不总是产生最佳的财务绩效。
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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来源期刊
Journal of Investing
Journal of Investing BUSINESS, FINANCE-
CiteScore
1.10
自引率
16.70%
发文量
42
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