Analyzing and forecasting financial series with singular spectral analysis

IF 0.8 Q4 STATISTICS & PROBABILITY Dependence Modeling Pub Date : 2022-01-01 DOI:10.1515/demo-2022-0112
A. Makshanov, A. Musaev, D. Grigoriev
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引用次数: 1

Abstract

Abstract Modern techniques for managing multidimensional stochastic processes that reflect the dynamics of unstable environments are proactive, which refers to decision making based on forecasting the system’s state vector evolution. At the same time, the dynamics of open nonlinear systems are largely determined by their chaotic nature, which leads to a violation of stationarity and ergodicity of the series of observations and, as a result, to a catastrophic decrease in the efficiency of forecasting algorithms based on traditional methods of multivariate statistical data analysis. In this article, we make an attempt to reduce the instability influence by employing singular spectrum analysis (SSA) algorithms. This technique has been employed in a wide class of applied data analysis problems formulated in terms of singular decomposition of data matrices: technologies of immunocomputing and SSA.
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金融序列的奇异谱分析与预测
摘要现代管理反映不稳定环境动力学的多维随机过程的技术是主动的,指的是基于预测系统状态向量演化的决策。同时,开放非线性系统的动力学在很大程度上由其混沌性质决定,这导致了观测序列的平稳性和遍历性的违反,从而导致基于传统多元统计数据分析方法的预测算法的效率急剧下降。在本文中,我们试图通过使用奇异谱分析(SSA)算法来减少不稳定性的影响。这项技术已被用于一类广泛的应用数据分析问题,这些问题是根据数据矩阵的奇异分解制定的:免疫计算和SSA技术。
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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
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