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Choosing Prior Hyperparameters: With Applications to Time-Varying Parameter Models

机译:选择先前的超参数:随时间变化的参数模型的应用

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摘要

Time-varying parameter models with stochastic volatility are widely used to study macroeconomic and financial data. These models are almost exclusively estimated using Bayesian methods. A common practice is to focus on prior distributions that themselves depend on relatively few hyperparameters such as the scaling factor for the prior covariance matrix of the residuals governing time variation in the parameters. The choice of these hyperparameters is crucial because their influence is sizeable for standard sample sizes. In this article, we treat the hyperparameters as part of a hierarchical model and propose a fast, tractable, easy-to-implement, and fully Bayesian approach to estimate those hyperparameters jointly with all other parameters in the model. We show via Monte Carlo simulations that, in this class of models, our approach can drastically improve on using fixed hyperparameters previously proposed in the literature. Supplementary materials for this article are available online.
机译:具有随机波动率的时变参数模型被广泛用于研究宏观经济和金融数据。这些模型几乎是使用贝叶斯方法专门估算的。一种常见的做法是关注本身依赖于相对较少的超参数的先验分布,例如控制参数时间变化的残差的先验协方差矩阵的比例因子。这些超参数的选择至关重要,因为它们的影响对于标准样本大小而言是相当大的。在本文中,我们将超参数视为分层模型的一部分,并提出了一种快速,易于处理,易于实现且完全贝叶斯的方法来与模型中的所有其他参数一起估算这些超参数。我们通过蒙特卡洛模拟表明,在此类模型中,我们的方法可以大大改善使用先前文献中提出的固定超参数的能力。可在线获得本文的补充材料。

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