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QUASI-BAYESIAN ESTIMATION OF TIME-VARYING VOLATILITY IN DSGE MODELS

机译:DSGE模型中时变波动率的拟贝叶斯估计

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摘要

We propose a novel quasi-Bayesian Metropolis-within-Gibbs algorithm that can be used to estimate drifts in the shock volatilities of a linearized dynamic stochastic general equilibrium (DSGE) model. The resulting volatility estimates differ from the existing approaches in two ways. First, the time variation enters non-parametrically, so that our approach ensures consistent estimation in a wide class of processes, thereby eliminating the need to specify the volatility law of motion and alleviating the risk of invalid inference due to mis-specification. Second, the conditional quasi-posterior of the drifting volatilities is available in closed form, which makes inference straightforward and simplifies existing algorithms. We apply our estimation procedure to a standard DSGE model and find that the estimated volatility paths are smoother compared to alternative stochastic volatility estimates. Moreover, we demonstrate that our procedure can deliver statistically significant improvements to the density forecasts of the DSGE model compared to alternative methods.
机译:我们提出了一种新颖的准贝叶斯大都市内吉布斯算法,该算法可用于估计线性动态随机一般均衡(DSGE)模型的冲击波漂移。得出的波动率估计值在两个方面与现有方法不同。首先,时间变化是非参数输入的,因此我们的方法可确保在广泛的过程类别中进行一致的估计,从而无需指定运动的波动规律,并减少了因规格错误而导致无效推断的风险。其次,漂移波动率的条件准后验是封闭形式的,这使得推断变得简单,并简化了现有算法。我们将估计程序应用于标准DSGE模型,发现与其他随机波动率估计相比,估计波动率路径更平滑。此外,我们证明了与替代方法相比,我们的程序可以为DSGE模型的密度预测提供统计学上显着的改进。

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