Predictability of cryptocurrency returns: evidence from robust tests

IF 0.6 Q4 STATISTICS & PROBABILITY Dependence Modeling Pub Date : 2022-01-01 DOI:10.1515/demo-2022-0111
Siyun He, R. Ibragimov
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引用次数: 0

Abstract

Abstract The paper provides a comparative empirical study of predictability of cryptocurrency returns and prices using econometrically justified robust inference methods. We present robust econometric analysis of predictive regressions incorporating factors, which were suggested by Liu, Y., & Tsyvinski, A. (2018). Risks and returns of cryptocurrency. NBER working paper no. 24877; Liu, Y., & Tsyvinski, A. (2021). Risks and returns of cryptocurrency. The Review of Financial Studies, 34(6), 2689–2727, as useful predictors for cryptocurrency returns, including cryptocurrency momentum, stock market factors, acceptance of Bitcoin, and Google trends measure of investors’ attention. Due to inherent heterogeneity and dependence properties of returns and other time series in financial and crypto markets, we provide the analysis of the predictive regressions using both heteroskedasticity and autocorrelation consistent (HAC) standard-errors and also the recently developed t t -statistic robust inference approaches, Ibragimov, R., & Müller, U. K. (2010). t-statistic based correlation and heterogeneity robust inference. Journal of Business and Economic Statistics, 28, 453–468; Ibragimov, R., & Müller, U. K. (2016). Inference with few heterogeneous clusters. Review of Economics and Statistics, 98, 83–96. We provide comparisons of robust predictive regression estimates between different cryptocurrencies and their corresponding risk and factor exposures. In general, the number of significant factors decreases as we use more robust t-tests, and the t-statistic robust inference approaches appear to perform better than the t-tests based on HAC standard errors in terms of pointing out interpretable economic conclusions. The results in this paper emphasize the importance of the use of robust inference approaches in the analysis of economic and financial data affected by the problems of heterogeneity and dependence.
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加密货币回报的可预测性:来自稳健测试的证据
摘要本文使用计量经济学合理的稳健推理方法,对加密货币回报和价格的可预测性进行了比较实证研究。我们对刘,Y.和Tsyvinski,A.(2018)提出的纳入因素的预测回归进行了稳健的计量经济学分析。加密货币的风险和回报。NBER第24877号工作文件;刘,Y.,Tsyvinski,A.(2021)。加密货币的风险和回报。《金融研究评论》,34(6),2689–2727,作为加密货币回报的有用预测因素,包括加密货币动量、股市因素、比特币的接受度和谷歌趋势对投资者注意力的衡量。由于金融和加密货币市场中收益和其他时间序列的内在异质性和依赖性,我们使用异方差和自相关一致性(HAC)标准误差以及最近开发的t-t统计鲁棒推理方法对预测回归进行了分析,Ibragimov,R.和Müller,U.K.(2010)。基于t-统计的相关性和异质性鲁棒推理。《商业与经济统计杂志》,28453-468;Ibragimov,R.和Müller,英国(2016)。具有少量异质聚类的推断。《经济学与统计学评论》,98,83–96。我们提供了不同加密货币之间稳健预测回归估计的比较及其相应的风险和因素敞口。一般来说,随着我们使用更稳健的t检验,显著因素的数量会减少,并且在指出可解释的经济结论方面,t统计稳健推理方法似乎比基于HAC标准误差的t检验表现更好。本文的结果强调了在分析受异质性和依赖性问题影响的经济和金融数据时使用稳健推理方法的重要性。
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来源期刊
Dependence Modeling
Dependence Modeling STATISTICS & PROBABILITY-
CiteScore
1.00
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊介绍: The journal Dependence Modeling aims at providing a medium for exchanging results and ideas in the area of multivariate dependence modeling. It is an open access fully peer-reviewed journal providing the readers with free, instant, and permanent access to all content worldwide. Dependence Modeling is listed by Web of Science (Emerging Sources Citation Index), Scopus, MathSciNet and Zentralblatt Math. The journal presents different types of articles: -"Research Articles" on fundamental theoretical aspects, as well as on significant applications in science, engineering, economics, finance, insurance and other fields. -"Review Articles" which present the existing literature on the specific topic from new perspectives. -"Interview articles" limited to two papers per year, covering interviews with milestone personalities in the field of Dependence Modeling. The journal topics include (but are not limited to):  -Copula methods -Multivariate distributions -Estimation and goodness-of-fit tests -Measures of association -Quantitative risk management -Risk measures and stochastic orders -Time series -Environmental sciences -Computational methods and software -Extreme-value theory -Limit laws -Mass Transportations
期刊最新文献
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