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Testing for asymmetric nonlinear short- and long-run relationships between bitcoin, aggregate commodity and gold prices

机译:比特币,总商品和黄金价格之间的不对称非线性短期和长期关系的测试

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摘要

Unlike prior studies, this study examines the nonlinear, asymmetric and quantile effects of aggregate commodity index and gold prices on the price of Bitcoin. Using daily data from July 17, 2010 to February 2, 2017, we employed several advanced autoregressive distributed lag (ARDL) models. The nonlinear ARDL approach was applied to uncover short- and long-run asymmetries, whereas the quantile ARDL was applied to account for a second type of asymmetry, known as the distributional asymmetry according to the position of a dependent variable within its own distribution. Moreover, we extended the nonlinear ARDL to a quantile framework, leading to a richer new model, which allows testing for distributional asymmetry while accounting for short- and long-run asymmetries. Overall, our results indicate the possibility to predict Bitcoin price movements based on price information from the aggregate commodity index and gold prices. Importantly, we report the nuanced result that most often the relations between bitcoin and aggregate commodity, on the one hand, and between bitcoin and gold, on the other, are asymmetric, nonlinear, and quantiles-dependent, suggesting the need to apply non-standard cointegration models to uncover the complexity and hidden relations between Bitcoin and asset classes.
机译:与先前的研究不同,本研究审查了总商品指数和黄金价格对比特币价格的非线性,不对称和量化效应。使用2010年7月17日至2017年2月2日的日常数据,我们雇用了几种先进的自回归分布式滞后(ARDL)模型。施加非线性ARDL方法以揭示短 - 和长期不对称,而施用量子rd1施加用于第二种类型的不对称性,称为根据其自身分布内的依赖变量的位置的分布不对称。此外,我们将非线性ARDL扩展到分位式框架,导致更丰富的新模型,这允许测试分配不对称,同时考虑短期和长期不对称。总体而言,我们的结果表明,根据总商品指数和黄金价格的价格信息预测比特币价格走势。重要的是,我们报告了大多数往往是比特币和聚合商品之间的关系,一方面以及比特币和金之间的关系的细节结果是不对称的,非线性和量子依赖性,这表明需要非对象标准协整模型,以揭示比特币和资产类别之间的复杂性和隐性关系。

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