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Bayes shrinkage estimation for high-dimensional VAR models with scale mixture of normal distributions for noise

机译:具有噪声正态分布比例混合的高维VAR模型的贝叶斯收缩估计

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We propose Bayesian shrinkage methods for coefficient estimation for high-dimensional vector autoregressive (VAR) models using scale mixtures of multivariate normal distributions for independently sampled additive noises. We also suggest an efficient selection procedure for the shrinkage parameter as a computationally feasible alternative to the traditional MCMC sampling methods for high-dimensional data. A shrinkage parameter is selected at the minimum point of a newly proposed score function which is asymptotically equivalent to the mean squared error of the model coefficients. The selected shrinkage parameter is presented in a closed form as a function of sample size, level of noise, and non-normality in data, and it can be efficiently estimated by using a suggested variation of cross validation. Consistency of both of the cross validation estimator and proposed shrinkage estimator is proved. The competitiveness of the proposed methods is demonstrated based on comprehensive experimental results using simulated data and high-dimensional plant gene expression data in the context of coefficient estimation and structural inference for VAR models. The proposed methods are applicable to high dimensional stationary time series with or without near unit roots. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们提出了贝叶斯收缩方法,用于高维矢量自回归(VAR)模型的系数估计,该模型使用多元正态分布的比例混合来独立采样加性噪声。我们还建议一种有效的收缩参数选择程序,作为对高维数据的传统MCMC采样方法的一种计算上可行的替代方法。在新提出的得分函数的最小点处选择收缩参数,该收缩函数渐近等效于模型系数的均方误差。所选的收缩参数以封闭形式呈现,与样本量,噪声水平和数据的非正常性有关,可以使用建议的交叉验证变体有效地进行估算。证明了交叉验证估计量和拟议的收缩估计量的一致性。在VAR模型的系数估计和结构推断的背景下,使用模拟数据和高维植物基因表达数据,基于综合实验结果,证明了所提出方法的竞争力。所提出的方法适用于有或没有近单位根的高维平稳时间序列。 (C)2016 Elsevier B.V.保留所有权利。

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