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Bayesian nonparametric sparse VAR models

机译:贝叶斯非参数稀疏var模型

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High dimensional vector autoregressive (VAR) models require a large number of parameters to be estimated and may suffer of inferential problems. We propose a new Bayesian nonparametric (BNP) Lasso prior (BNP-Lasso) for high-dimensional VAR models that can improve estimation efficiency and prediction accuracy. Our hierarchical prior overcomes overparametrization and overfitting issues by clustering the VAR coefficients into groups and by shrinking the coefficients of each group toward a common location. Clustering and shrinking effects induced by the BNP-Lasso prior are well suited for the extraction of causal networks from time series, since they account for some stylized facts in real-world networks, which are sparsity, communities structures and heterogeneity in the edges intensity. In order to fully capture the richness of the data and to achieve a better understanding of financial and macroeconomic risk, it is therefore crucial that the model used to extract network accounts for these stylized facts. (C) 2019 Elsevier B.V. All rights reserved:
机译:尺寸矢量自回归(var)模型需要估计大量参数,并且可能遭受推动问题。我们提出了一种新的贝叶斯非参数(Bnp)套索用于高维的VAR模型的(bnp-lasso),可以提高估计效率和预测精度。我们的层次结构通过将VAR系数聚类为组并通过将每个组的系数缩小到公共位置来克服过公差化和过度拟合问题。 BNP-Lasso引发的聚类和收缩效果非常适合从时间序列提取因果网络,因为它们占现实网络中的一些程式化事实,这是边缘强度中的稀疏性,社区结构和异质性。为了充分捕捉数据的丰富性,并更好地了解金融和宏观经济风险,因此用于提取网络占这些风格化事实的模型至关重要。 (c)2019 Elsevier B.V.保留所有权利:

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