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引用次数: 0
摘要
加密货币市值的急剧增长推动了对其在投资组合构建中的多元化效益的研究。在本文中,我们使用一组经典和现代测量工具,相对于应用于传统和加密资产投资领域的朴素1/ N规则,评估了八种投资组合配置策略的样本外性能。评估的策略包括从经典的马科维茨规则到最近引入的LIBRO方法(Trimborn et al. Journal of Financial Econometrics, 2019年1-27日)。此外,我们还比较了关于输入估计器应用的策略的三种扩展。结果表明,在存在替代资产(如加密货币)的情况下,均值方差策略的表现低于基准投资组合。相比之下,CVaR优化往往优于基准和几何优化,尽管我们发现前者的成功与交易成本有很强的依赖性。此外,我们发现证据表明,流动性有限的策略往往表现非常好。因此,我们的研究结果强调了收益的非正态分布和控制另类资产市场流动性约束的必要性。
Evaluation of multi-asset investment strategies with digital assets
The drastic growth of the cryptocurrencies market capitalization boosts investigation of their diversification benefits in portfolio construction. In this paper with a set of classical and modern measurement tools, we assess the out-of-sample performance of eight portfolio allocation strategies relative to the naive 1/ N rule applied to traditional and crypto-assets investment universe. Evaluated strategies include a range from classical Markowitz rule to the recently introduced LIBRO approach (Trimborn et al. in Journal of Financial Econometrics 1–27, 2019). Furthermore, we also compare three extensions for strategies with respect to input estimators applied. The results show that in the presence of alternative assets, such as cryptocurrencies, mean–variance strategies underperform the benchmark portfolio. In contrast, CVaR optimization tends to outperform the benchmark as well as geometric optimization, although we find a strong dependence of the former’s success on trading costs. Furthermore, we find evidence that liquidity-bounded strategies tend to perform very well. Thus, our findings underscore the non-normal distribution of returns and the necessity to control for liquidity constraints at alternative asset markets.