复值平稳过程的时间不相关成分建模

IF 0.7 Q3 STATISTICS & PROBABILITY
Niko Lietzén, L. Viitasaari, Pauliina Ilmonen
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引用次数: 1

摘要

考虑离散弱平稳过程下的复值线性混合模型。我们恢复感兴趣的潜在成分,它们经历了线性混合。研究了基于协方差矩阵与时滞自协方差矩阵同时对角化的经典解混估计量$\tau$的渐近性质。我们的主要贡献是我们的渐近结果可以应用于大类过程。在相关文献中,通常假设这些过程具有弱相关性。我们扩展了这个类,并考虑了在更强依赖结构下的解混合估计器。特别地,我们分析了解混估计量在长程和短程依赖复值过程下的渐近性态。因此,我们的理论涵盖了收敛速度比通常的$\sqrt{T}$慢的解混估计量和产生非高斯渐近分布的解混估计量。所提出的方法是一个强大的引人注目的工具和高度适用于统计的几个领域。例如,在生物医学应用和信号处理中经常遇到复值过程。此外,我们的方法可以应用于涉及时间不相关对的实值问题的模型。例如,在金融应用程序中会遇到这些问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modeling temporally uncorrelated components of complex-valued stationary processes
We consider a complex-valued linear mixture model, under discrete weakly stationary processes. We recover latent components of interest, which have undergone a linear mixing. We study asymptotic properties of a classical unmixing estimator, that is based on simultaneous diagonalization of the covariance matrix and an autocovariance matrix with lag $\tau$. Our main contribution is that our asymptotic results can be applied to a large class of processes. In related literature, the processes are typically assumed to have weak correlations. We extend this class and consider the unmixing estimator under stronger dependency structures. In particular, we analyze the asymptotic behavior of the unmixing estimator under both, long- and short-range dependent complex-valued processes. Consequently, our theory covers unmixing estimators that converge slower than the usual $\sqrt{T}$ and unmixing estimators that produce non-Gaussian asymptotic distributions. The presented methodology is a powerful prepossessing tool and highly applicable in several fields of statistics. Complex-valued processes are frequently encountered in, for example, biomedical applications and signal processing. In addition, our approach can be applied to model real-valued problems that involve temporally uncorrelated pairs. These are encountered in, for example, applications in finance.
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来源期刊
Modern Stochastics-Theory and Applications
Modern Stochastics-Theory and Applications STATISTICS & PROBABILITY-
CiteScore
1.30
自引率
50.00%
发文量
0
审稿时长
10 weeks
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