A novel and effective method for characterizing time series correlations based on martingale difference correlation.

IF 4.6 Q2 MATERIALS SCIENCE, BIOMATERIALS ACS Applied Bio Materials Pub Date : 2024-10-01 DOI:10.1063/5.0237801
Ang Li, Du Shang, Pengjian Shang
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Abstract

Analysis of correlation between time series is an essential step for complex system studies and dynamical characteristics extractions. Martingale difference correlation (MDC) theory is mainly concerned with the correlation of conditional mean values between response variables and predictor variables. It is the generalization and deepening of the Pearson correlation coefficient, Spearman correlation coefficient, Kendall correlation coefficient, and other statistics. In this paper, on the basis of phase space reconstruction, the generalized dependence index (GDI) is proposed by using MDC and martingale difference divergence matrix theories, which can measure the degree of dependence between time series more effectively. Moreover, motivated by the theoretical framework of the refined distance correlation method, the corresponding dependence measure (DE) is employed in this paper to construct the DE-GDI plane, so as to comprehensively and intuitively distinguish different types of data and deeply explore the operating mechanism behind the relevant time series and complex systems. According to the performances tested by the different simulated and real-world data, our proposed method performs relatively reasonably and reliably in dependence measuring and data distinguishing. The proposal of this complex data clustering method can not only recognize the features of complex systems but also distinguish them effectively so as to acquire more relevant detailed information.

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基于马氏差分相关性的表征时间序列相关性的新型有效方法。
分析时间序列之间的相关性是复杂系统研究和动态特征提取的必要步骤。马丁格尔差分相关(MDC)理论主要关注响应变量与预测变量之间条件均值的相关性。它是对 Pearson 相关系数、Spearman 相关系数、Kendall 相关系数等统计量的概括和深化。本文在相空间重构的基础上,利用 MDC 和鞅差发散矩阵理论,提出了广义依存度指数(GDI),可以更有效地度量时间序列之间的依存度。此外,在细化距离相关法理论框架的推动下,本文采用了相应的依存度(DE)来构造 DE-GDI 平面,从而全面直观地区分不同类型的数据,深入探讨相关时间序列和复杂系统背后的运行机制。根据不同模拟数据和实际数据的性能测试,我们提出的方法在依赖性度量和数据区分方面表现较为合理和可靠。这种复杂数据聚类方法的提出不仅能识别复杂系统的特征,还能有效区分复杂系统,从而获取更多相关的详细信息。
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来源期刊
ACS Applied Bio Materials
ACS Applied Bio Materials Chemistry-Chemistry (all)
CiteScore
9.40
自引率
2.10%
发文量
464
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