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首页> 外文期刊>Journal of the American statistical association >Adaptive Bayesian Time-Frequency Analysis of Multivariate Time Series
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Adaptive Bayesian Time-Frequency Analysis of Multivariate Time Series

机译:多元时间序列的自适应贝叶斯时频分析

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This article introduces a nonparametric approach to multivariate time-varying power spectrum analysis. The procedure adaptively partitions a time series into an unknown number of approximately stationary segments, where some spectral components may remain unchanged across segments, allowing components to evolve differently over time. Local spectra within segments are fit through Whittle likelihood-based penalized spline models of modified Cholesky components, which provide flexible nonparametric estimates that preserve positive definite structures of spectral matrices. The approach is formulated in a Bayesian framework, in which the number and location of partitions are random, and relies on reversible jump Markov chain and Hamiltonian Monte Carlo methods that can adapt to the unknown number of segments and parameters. By averaging over the distribution of partitions, the approach can approximate both abrupt and slowly varying changes in spectral matrices. Empirical performance is evaluated in simulation studies and illustrated through analyses of electroencephalography during sleep and of the El Nino-Southern Oscillation. Supplementary materials for this article are available online.
机译:本文介绍了一种用于多变量时变功率谱分析的非参数方法。该过程将时间序列自适应地划分为未知数量的近似固定的分段,其中某些频谱分量可能在分段之间保持不变,从而允许分量随时间变化。段内的局部光谱通过修改后的Cholesky分量的基于Whittle似然的罚样条模型进行拟合,该模型提供了灵活的非参数估计,可以保留光谱矩阵的正定结构。该方法是在贝叶斯框架中制定的,其中分区的数量和位置是随机的,并且依赖于可逆跳转马尔可夫链和哈密顿蒙特卡洛方法,这些方法可以适应未知数目的段和参数。通过平均分配分区,该方法可以近似估计频谱矩阵的突变和缓慢变化。在模拟研究中评估了经验性能,并通过对睡眠期间的脑电图分析和厄尔尼诺-南方涛动的分析进行了说明。可在线获得本文的补充材料。

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