黄金、加密货币和石油的适应性分析与预测

I. Khasanova, L. Orlik, G. Zhukova
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摘要

这项工作致力于识别和跟踪世界市场影响下的发展趋势和经济结构变化,以黄金、比特币和石油价格的非平稳时间序列为代表。长波和中波概念的启发式潜力用于预测目的。利用自适应相关系数对金融时间序列进行了分析。传统系数的动态表现为一个明显平滑的图形,这妨碍了对数据进行充分的定性分析。对所得结果进行分析,以确定波动,确定经济增长、繁荣、衰退和停滞的阶段。根据所考虑的时间序列,概述了世界黄金、比特币和石油市场的情况。基于这些市场动态中确定的趋势,使用ARIMA模型和神经网络进行短期预测。使用R环境进行统计计算。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Gold, Cryptocurrency and Oil Adaptive Analysis and Forecasting
The work is devoted to identifying and tracking development trends, structural shifts in the economy under the influence of world markets, represented by non-stationary time series of gold, bitcoin and oil prices. The heuristic potential of the concept of the long and medium wave is used for forecasting purposes. The analysis of financial time series using the adaptive correlation coefficient is carried out. The dynamics of the traditional coefficient appears to be a significantly smoothed graph, which prevents sufficient qualitative analysis of the data. The results obtained are analysed to identify wave fluctuations, to determine the phases of growth, prosperity, recession and stagnation in the economy. An overview of the situation on the world markets for gold, bitcoin and oil based on the considered time series is presented. Based on the identified trends in the dynamics of these markets, short-term forecasting was carried out using ARIMA models and neural networks. The statistical calculations R environment is used.
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