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The Stochastic Volatility in Mean Model With Time-Varying Parameters: An Application to Inflation Modeling

机译:具有时变参数的均值模型中的随机波动率:在通货膨胀模型中的应用

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This article generalizes the popular stochastic volatility in mean model to allow for time-varying parameters in the conditional mean. The estimation of this extension is nontrival since the volatility appears in both the conditional mean and the conditional variance, and its coefficient in the former is time-varying. We develop an efficient Markov chain Monte Carlo algorithm based on band and sparse matrix algorithms instead of the Kalman filter to estimate this more general variant. The methodology is illustrated with an application that involves U.S., U.K., and Germany inflation. The estimation results show substantial time-variation in the coefficient associated with the volatility, highlighting the empirical relevance of the proposed extension. Moreover, in a pseudo out-of-sample forecasting exercise, the proposed variant also forecasts better than various standard benchmarks.
机译:本文对均值模型中流行的随机波动率进行了概括,以考虑条件均值中随时间变化的参数。由于在条件均值和条件方差中均会出现波动,因此对这种扩展的估计并不重要,前者的系数随时间变化。我们基于频带和稀疏矩阵算法而不是卡尔曼滤波器,开发了一种有效的马尔可夫链蒙特卡罗算法,以估算这种更通用的变量。通过涉及美国,英国和德国通胀的应用说明了该方法。估计结果表明,与波动率相关的系数存在较大的时变,突出了拟议扩展的经验相关性。此外,在伪样本外预测活动中,所提出的变体也比各种标准基准更好地进行了预测。

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