多脑信号分析的层次动态PARCOR模型

Pub Date : 2023-01-01 DOI:10.4310/21-sii699
Wenjie Zhao, R. Prado
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引用次数: 0

摘要

我们提出了一种有效的层次模型来推断多个非平稳时间序列的潜在结构。该模型描述了多个时间序列在部分自相关域中的时变行为,与实际中常用的时间和/或频率域的模型(如时变自回归模型)相比,该模型具有较低的维数表示,因此计算速度更快。我们举例说明了所提出的分层动态PARCOR模型和相应的贝叶斯推理程序在分析特定实验设置或临床研究中同时记录的多个脑信号的背景下的性能。所提出的方法使我们能够有效地获得多个时间序列的时频特性的后验总结,以及总结其共同底层结构的后验总结。
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Hierarchical dynamic PARCOR models for analysis of multiple brain signals
We present an efficient hierarchical model for inferring latent structure underlying multiple non-stationary time series. The proposed model describes the time-varying behavior of multiple time series in the partial autocorrelation domain, which results in a lower dimensional representation, and consequently computationally faster inference, than those required by models in the time and/or frequency domains, such as time-varying autoregressive models, which are commonly used in practice. We illustrate the performance of the proposed hierarchical dynamic PARCOR models and corresponding Bayesian inferential procedures in the context of analyzing multiple brain signals recorded simultaneously during specific experimental settings or clinical studies. The proposed approach allows us to efficiently obtain posterior summaries of the time-frequency characteristics of the multiple time series, as well as those summarizing their common underlying structure.
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