Bayesian Nonparametric Multivariate Mixture of Autoregressive Processes with Application to Brain Signals

IF 2 Q2 ECONOMICS Econometrics and Statistics Pub Date : 2024-02-17 DOI:10.1016/j.ecosta.2024.01.004
Guillermo Granados-Garcia, Raquel Prado, Hernando Ombao
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引用次数: 0

Abstract

One of neuroscience’s goals is to study the interactions between different brain regions during rest and while performing specific cognitive tasks. Multivariate Bayesian autoregressive decomposition (MBMARD) is proposed as an intuitive and novel Bayesian non-parametric model to represent high-dimensional signals as a low-dimensional mixture of univariate uncorrelated latent oscillations. Each latent oscillation captures a specific underlying oscillatory activity and, hence, is modeled as a unique second-order autoregressive process due to a compelling property, namely, that its spectral density’s shape is characterized by a unique frequency peak and bandwidth, parameterized by a location and a scale parameter. The posterior distributions of the latent oscillation parameters are computed using a Metropolis-within-Gibbs algorithm. One of the advantages of the MBMARD model is its higher robustness against misspecification, compared with standard models. The main scientific questions addressed by the MBMARD model relate to the effects of long-term alcohol abuse on memory. These effects were examined by analyzing the electroencephalogram records of alcoholic and non-alcoholic subjects performing a visual recognition experiment. The MBMARD model yielded novel and interesting findings, including the identification of subject-specific clusters of low- and high-frequency oscillations in different brain regions.
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贝叶斯非参数多变量自回归过程混合物在脑信号中的应用
神经科学的目标之一是研究不同脑区在休息和执行特定认知任务时的相互作用。多变量贝叶斯自回归分解(MBMARD)是一种直观、新颖的贝叶斯非参数模型,用于将高维信号表示为单变量不相关潜振荡的低维混合物。每个潜在振荡都捕捉到了特定的潜在振荡活动,因此,由于一个引人注目的特性,即其频谱密度的形状以独特的频率峰值和带宽为特征,并以位置和尺度参数为参数,因此被建模为一个独特的二阶自回归过程。使用 Metropolis-Within-Gibbs 算法计算潜在振荡参数的后验分布。与标准模型相比,MBMARD 模型的优势之一是对错误规范具有更高的鲁棒性。MBMARD 模型解决的主要科学问题涉及长期酗酒对记忆的影响。我们通过分析酗酒者和非酗酒者在进行视觉识别实验时的脑电图记录来研究这些影响。MBMARD 模型得出了新颖而有趣的发现,包括在不同脑区识别出特定受试者的低频和高频振荡群。
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来源期刊
CiteScore
3.10
自引率
10.50%
发文量
84
期刊介绍: Econometrics and Statistics is the official journal of the networks Computational and Financial Econometrics and Computational and Methodological Statistics. It publishes research papers in all aspects of econometrics and statistics and comprises of the two sections Part A: Econometrics and Part B: Statistics.
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