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Bayesian nonparametric analysis of multivariate time series: A matrix Gamma Process approach

机译:多元时间序列的贝叶斯非参数分析:矩阵伽玛工艺方法

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摘要

Many Bayesian nonparametric approaches to multivariate time series rely on Whittle's Likelihood, involving the second order structure of a stationary time series by means of its spectral density matrix. In this work, we model the spectral density matrix by means of random measures that are constructed in such a way that positive definiteness is ensured. This is in line with existing approaches for the univariate case, where the normalized spectral density is modeled similar to a probability density, e.g. with a Dirichlet process mixture of Beta densities. We present a related approach for multivariate time series, with matrix-valued mixture weights induced by a Hermitian positive definite Gamma process. The latter has not been considered in the literature, allows to include prior knowledge and possesses a series representation that will be used in MCMC methods. We establish posterior consistency and contraction rates and small sample performance of the proposed procedure is shown in a simulation study and for real data. (C) 2019 Elsevier Inc. All rights reserved.
机译:许多贝叶斯非参数方法依赖于旺盛的时间序列的多变量时间序列,涉及借助于其光谱密度矩阵的静止时间序列的二阶结构。在这项工作中,我们通过以这种方式构造的随机测量来模拟光谱密度矩阵,这些措施使得确保正定的正定性。这符合单变量壳体的现有方法,其中归一化光谱密度类似于概率密度,例如概率密度。具有Dirichlet的β密度的加工混合物。我们提出了一种相关的多变量时间序列的方法,具有由麦克尔德积极的γ致γ过程引起的基质值混合重量。后者未在文献中考虑,允许在MCMC方法中包含先验知识并拥有一个系列表示。我们建立了后续一致性和收缩率,提出的程序的小样本性能显示在模拟研究和实际数据中。 (c)2019 Elsevier Inc.保留所有权利。

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