High-dimensional structure learning of sparse vector autoregressive models using fractional marginal pseudo-likelihood

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作者
Kimmo Suotsalo
Yingying Xu
Jukka Corander
Johan Pensar
机构
[1] Aalto University,Department of Biostatistics, Faculty of Medicine
[2] RIKEN,Parasites and Microbes
[3] Center for Advanced Intelligence Project AIP/iTHEMS,Helsinki Institute of Information Technology, Department of Mathematics and Statistics
[4] University of Oslo,Department of Mathematics
[5] Wellcome Sanger Institute,undefined
[6] University of Helsinki,undefined
[7] University of Oslo,undefined
来源
Statistics and Computing | 2021年 / 31卷
关键词
Vector autoregression; Pseudo-likelihood; Fractional marginal likelihood; Gaussian graphical models; Multivariate time series;
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摘要
Learning vector autoregressive models from multivariate time series is conventionally approached through least squares or maximum likelihood estimation. These methods typically assume a fully connected model which provides no direct insight to the model structure and may lead to highly noisy estimates of the parameters. Because of these limitations, there has been an increasing interest towards methods that produce sparse estimates through penalized regression. However, such methods are computationally intensive and may become prohibitively time-consuming when the number of variables in the model increases. In this paper we adopt an approximate Bayesian approach to the learning problem by combining fractional marginal likelihood and pseudo-likelihood. We propose a novel method, PLVAR, that is both faster and produces more accurate estimates than the state-of-the-art methods based on penalized regression. We prove the consistency of the PLVAR estimator and demonstrate the attractive performance of the method on both simulated and real-world data.
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