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Analysis of the bitcoin stock market indexes using comparative study of two models SV with MCMC algorithm

机译:使用MCMC算法的两种模型SV比较研究对比特币股票市场指标分析

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The purpose of this article is to find a better technique for estimating the volatility of the price of bitcoin on the one hand and to check if this special kind of asset called cryptocurrency behaves like other stock market indices. We include five stock market indexes for different countries such as Standard and Poor's 500 composite Index (S&P), Nasdaq, Nikkei, Stoxx, and DowJones. Using daily data over the period 2010-2019. We examine two asymmetric stochastic volatility models used to describe the volatility dependencies found in most financial returns. Two models are compared, the first is the autoregressive stochastic volatility model with Student's t-distribution (ARSV-t), and the second is the basic SVOL. To estimate these models, our analysis is based on the Markov Chain Monte-Carlo method. Therefore, the technique used is a Metropolis-Hastings (Hastings in Biometrika 57:97-109, 1970), and the Gibbs sampler (Casella and George in Am Stat 46:167-174, 1992; Gelfand and Smith in J Am Stat Assoc 85:398-409, 1990; Gilks and Wild in 41:337-348, 1992). Model comparisons illustrate that the ARSV-t model performs better performances. We conclude that this model is better than the SVOL model on the MSE and AIC function. This result concerns bitcoin as well as the other stock market indices. Without forgetting that our finding proves the efficiency of Markov Chain for our sample and the convergence and stability for all parameters to a certain level. On the whole, it seems that permanent shocks have an effect on the volatility of the price of the bitcoin and also on the other stock market. Our results will help investors better diversify their portfolio by adding this cryptocurrency.
机译:本文的目的是找到一种更好的技术,用于估计一方面比特币价格的波动性,并检查这种称为加密货币的特殊资产是否与其他股票市场指数相同。我们包括标准和穷人500个综合指数(标准普尔),纳斯达克,日经,STOXX和Dowjones等不同国家的五个股票市场指数。在2010-2019期间使用日常数据。我们检查用于描述大多数财务回报中发现的波动率依赖性的两个不对称随机挥发性模型。比较两种模型,首先是具有学生T分布(ARSV-T)的自回归随机挥发性模型,第二种是基本SVOL。为了估算这些模型,我们的分析基于Markov Chain Monte-Carlo方法。因此,使用的技术是大都会 - 黑斯廷斯(Biometrika 57:97-109,1970)和Gibbs采样器(Casella和Am Stat 46:167-174,1992; Gelfand和Jam Stat Assmith的Casella和George) 85:398-409,1999;吉尔克斯和野生41:337-348,1992)。模型比较说明ARSV-T模型执行更好的表现。我们得出结论,该模型优于MSE和AIC功能的SVOL模型。这结果涉及比特币以及其他股票市场指数。毫无遗忘,我们的发现证明了马尔可夫链的效率为我们的样本以及所有参数的融合和稳定性到一定程度。总的来说,似乎永久性冲击对比特币价格的波动效果以及对方的股票市场。我们的结果将帮助投资者通过添加此加密货币来更好地使他们的投资组合多样化。

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