首页> 外文期刊>Physica, A. Statistical mechanics and its applications >Multi-fluctuation nonlinear patterns of European financial markets based on adaptive filtering with application to family business, green, Islamic, common stocks, and comparison with Bitcoin, NASDAQ, and VIX
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Multi-fluctuation nonlinear patterns of European financial markets based on adaptive filtering with application to family business, green, Islamic, common stocks, and comparison with Bitcoin, NASDAQ, and VIX

机译:基于自适应滤波的欧洲金融市场多波动非线性模式,适用于家庭企业,绿色,伊斯兰,普通股,与比特币,纳斯达克和vix的比较

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This paper investigates power-law correlations, chaos, and randomness in prices of family business, green (low Carbon), Islamic (Shariah), and common stock indices from the European zone. Specifically, the estimations of nonlinear patterns are performed in empirical mode decomposition domain to obtain time-scale computed values. The main findings follow. For all markets, price long term fluctuations are persistent, whilst price short term fluctuations are anti-persistent. In addition, short term fluctuations are chaotic, while long term fluctuations are not. Furthermore, short term fluctuations are less affected by randomness than long term fluctuations. Moreover, the level of anti-persistence and the information content in short term fluctuations are similar across all four European markets. Besides, computed nonlinear statistics from intermediate fluctuations are in general lower than those from short fluctuations, and are higher than those from long fluctuations. Our methodology is also applied to Bitcoin, NASDAQ and VIX indices for comparison purpose. Some similarities in terms of randomness and dissimilarities in terms of long memory are clearly observed between European and US indices. Finally, it is found that the correlation between (i) long memory and chaos is positive, low, and not statistically significant, (ii) between long memory and randomness is positive, large, and statistically significant, and (iii) between chaos and randomness is negative, low, and not statistically significant. Active traders and portfolio managers can follow our research approach to determine specific trading strategies at short and long run horizons. (C) 2019 Elsevier B.V. All rights reserved.
机译:本文调查了来自欧洲地区的家庭企业,绿色(低碳),伊斯兰(伊斯兰教)和普通股指数的幂律相关,混乱和随机性。具体地,在经验模式分解域中执行非线性模式的估计,以获得时间级计算值。主要研究结果遵循。对于所有市场来说,价格长期波动持续存在,而价格短期波动是反持久性的。此外,短期波动是混乱的,而长期波动不是。此外,通过长期波动的随机性影响短期波动较小。此外,在所有四个欧洲市场的短期波动中的反持久性和信息内容的水平相似。此外,来自中间波动的计算非线性统计量通常低于短波动的统计,并且高于长波动的波动。我们的方法也适用于比特币,纳斯达克和VIX指数进行比较目的。在欧洲和美国指数之间清楚地观察到在长记忆方面的随机性和异化方面的一些相似之处。最后,发现(i)长记忆和混沌之间的相关性是阳性,低,并且在长记忆和随机性之间的阳性,低,并且没有统计学意义,是混沌和混乱之间的阳性,大的和统计学意义的阳性,大,统计学意义,并且(iii)之间随机性是负,低,且没有统计学意义。积极的交易商和投资组合管理人员可以遵循我们的研究方法来确定短期和长期视野的特定交易策略。 (c)2019 Elsevier B.v.保留所有权利。

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