Dissecting Time-Varying Risk Exposures in Cryptocurrency Markets

Daniele Bianchi, Massimo Guidolin, Manuela Pedio
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引用次数: 7

Abstract

In this paper we take an empirical asset pricing perspective and investigate the dominant view (possibly, an instinctive reflection of the media hype surrounding the surge of Bitcoin valuations) that cryptocurrencies represent a new asset class, spanning risks and payoffs sufficiently different from the traditional ones. Methodologically, we rely on a flexible dynamic econometric model that allows not only time-varying coefficients, but also allow that the entire forecasting model be changing over time. We estimate such model by looking at the time variation in the exposures of major cryptocurrencies to stock market risk factors (namely, the six Fama French factors), to precious metal commodity returns, and to cryptocurrency-specific risk-factors (namely, crypto-momentum, a sentiment index based on Google searches, and supply factors, i.e., electricity and computer power). The main empirical results suggest that cryptocurrencies are not systematically exposed to stock market factors, precious metal commodities or supply factors with the exception of some occasional spikes of the coecients during our sample. On the contrary, crypto assets are characterized by a time-varying but significant exposure to a sentiment index and to crypto-momentum. Despite the lack of predictability compared to traditional asset classes, cryptocurrencies display considerable diversification power in a portfolio perspective and as such they can lead to a moderate improvement in the realized Sharpe ratios and certainty equivalent returns within the context of a typical portfolio problem.
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剖析加密货币市场中的时变风险敞口
在本文中,我们采取了经验资产定价的角度,并调查了主流观点(可能是对围绕比特币估值激增的媒体炒作的本能反映),即加密货币代表了一种新的资产类别,其风险和收益与传统资产完全不同。在方法上,我们依赖于一个灵活的动态计量经济模型,它不仅允许系数随时间变化,而且允许整个预测模型随时间变化。我们通过观察主要加密货币对股票市场风险因素(即六个Fama French因素),贵金属商品回报以及加密货币特定风险因素(即加密动量,基于谷歌搜索的情绪指数和供应因素,即电力和计算机功率)的敞口的时间变化来估计这种模型。主要的实证结果表明,除了我们样本中偶尔出现的一些系数峰值外,加密货币没有系统地暴露于股票市场因素、贵金属商品或供应因素。相反,加密资产的特点是时变的,但对情绪指数和加密势头的影响很大。尽管与传统资产类别相比缺乏可预测性,但从投资组合的角度来看,加密货币显示出相当大的多样化能力,因此,在典型的投资组合问题背景下,它们可以导致实现夏普比率和确定性等效回报的适度改善。
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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