Copula methods for evaluating relative tail forecasting performance

IF 5.7 Q1 BUSINESS, FINANCE
Á. León, T. Ñíguez
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引用次数: 1

Abstract

PurposeThe authors apply their method to analyze which portfolios are capable of providing superior performance to those based on the Sharpe ratio (SR).Design/methodology/approachIn this paper the authors illustrate the use of conditional copulas for identifying differences in alternative portfolio performance strategies. The authors analyze which portfolios are capable of providing superior performance to those based on the SR.FindingsThe results show that under the Gaussian copula, both expected tail ratio (ETR) and skewness-kurtosis ratio portfolios exhibit remarkably low correlations respecting the SR portfolio. This means that these two portfolios are different respecting the SR one. The authors also find that copulas which focus on either the upper tail (Gumbel) or the lower tail (Clayton) render significant differences. In short, the copula analysis is useful to understand what kind of equity-screening strategy based on its corresponding performance measure (PM) performs better in relation to the SR portfolio.Practical implicationsCopula methods for evaluating relative tail forecasting performance provide an alternative tool when forecast differences are very small or found non statistically significant through standard tests.Originality/valueOur copula methods to evaluate models' performance differences are significant because when models' performance is rather similar, conclusions on statistical differences, can be defective as they may hinge on the subsample type or size used, leading to inefficient investment decisions. Our method based in copula is novel in this research topic.
用于评估相对尾部预测性能的Copula方法
目的作者应用他们的方法来分析哪些投资组合能够提供优于基于夏普比率(SR)的投资组合的性能。设计/方法论/方法在本文中,作者说明了使用条件连接词来识别替代投资组合绩效策略的差异。作者分析了哪些投资组合能够提供比基于SR的投资组合更好的性能。结果表明,在高斯copula下,期望尾率(ETR)和偏度峰度比投资组合相对于SR投资组合都表现出显著的低相关性。这意味着这两个投资组合在SR方面是不同的。作者还发现,专注于上尾(Gumbel)或下尾(Clayton)的交配会产生显著差异。简言之,copula分析有助于了解基于相应绩效指标(PM)的哪种股权筛选策略在SR投资组合中表现更好。实际含义当预测差异很小或通过标准测试发现无统计学意义时,用于评估相对尾部预测性能的Copula方法提供了一种替代工具。原创性/价值我们评估模型性能差异的copula方法是显著的,因为当模型的性能相当相似时,关于统计差异的结论可能是有缺陷的,因为它们可能取决于所使用的子样本类型或大小,导致投资决策效率低下。我们基于copula的方法在这个研究主题中是新颖的。
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 Risk Finance
Journal of Risk Finance BUSINESS, FINANCE-
CiteScore
6.20
自引率
6.70%
发文量
37
期刊介绍: The Journal of Risk Finance provides a rigorous forum for the publication of high quality peer-reviewed theoretical and empirical research articles, by both academic and industry experts, related to financial risks and risk management. Articles, including review articles, empirical and conceptual, which display thoughtful, accurate research and be rigorous in all regards, are most welcome on the following topics: -Securitization; derivatives and structured financial products -Financial risk management -Regulation of risk management -Risk and corporate governance -Liability management -Systemic risk -Cryptocurrency and risk management -Credit arbitrage methods -Corporate social responsibility and risk management -Enterprise risk management -FinTech and risk -Insurtech -Regtech -Blockchain and risk -Climate change and risk
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