Bitcoin and Cryptocurrencies - Not for the Faint-Hearted

Joerg Osterrieder, Julian Lorenz, Martin Strika
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引用次数: 73

Abstract

Cryptocurrencies became popular with the emergence of Bitcoin and have shown an unprecedented growth over the last few years. As of November 2016, more than 720 cryptocurrencies exist, with Bitcoin still being the most popular one. We provide both a statistical analysis as well as an extreme value analysis of the returns of the most important cryptocurrencies. A particular focus is on the tail risk characteristics and we will provide an in-depth univariate and multivariate extreme value analysis. The tail dependence of cryptocurrencies is investigated (using both empirical and Gaussian copulas). For investors—especially institutional ones—as well as regulators, an understanding of the risk and tail characteristics are of utmost importance. For cryptocurrencies to become a mainstream investable asset class, studying these properties is necessary. Our findings show that cryptocurrencies exhibit strong non-normal characteristics, large tail dependencies, depending on the particular cryptocurrencies and heavy tails. Statistical similarities can be observed for cryptocurrencies that share the same underlying technology. This has implications for risk management, financial engineering (such as derivatives on cryptocurrencies)—both from an investor’s as well as from a regulator’s point of view. To our knowledge, this is the first detailed study looking at the extreme value behaviour of cryptocurrencies, their correlations and tail dependencies as well as their statistical properties.
比特币和加密货币——不适合胆小的人
随着比特币的出现,加密货币变得流行起来,并在过去几年中显示出前所未有的增长。截至2016年11月,存在超过720种加密货币,比特币仍然是最受欢迎的加密货币。我们提供了最重要的加密货币回报的统计分析和极值分析。特别关注尾部风险特征,我们将提供深入的单变量和多变量极值分析。研究了加密货币的尾部依赖性(使用经验和高斯copula)。对于投资者——尤其是机构投资者——以及监管者来说,了解风险和尾部特征是至关重要的。为了使加密货币成为主流的可投资资产类别,研究这些属性是必要的。我们的研究结果表明,加密货币表现出强烈的非常态特征、大的尾部依赖性,这取决于特定的加密货币和重尾。对于共享相同底层技术的加密货币,可以观察到统计相似性。从投资者和监管机构的角度来看,这对风险管理、金融工程(如加密货币衍生品)都有影响。据我们所知,这是第一次详细研究加密货币的极值行为、它们的相关性和尾部依赖关系以及它们的统计属性。
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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