时变参数回归模型的时间依赖收缩

Time-dependent shrinkage of time-varying parameter regression models

Econometric Reviews · 2023
被引 1
人大 A-ABS 3

中文导读

研究了时变参数回归模型中系数方差的收缩问题,提出一种贝叶斯收缩先验,通过重参数化将方差收缩转化为变量收缩,并用辅助充分交织策略提高采样效率,模拟和通胀预测实证显示了方法的优势。

Abstract

This article studies the time-varying parameter (TVP) regression model in which the regression coefficients are random walk latent states with time-dependent conditional variances. This TVP model is flexible to accommodate a wide variety of time variation patterns but requires effective shrinkage on the state variances to avoid over-fitting. A Bayesian shrinkage prior is proposed based on reparameterization that translates the variance shrinkage problem into a variable shrinkage one in a conditionally linear regression with fixed coefficients. The proposed prior allows strong shrinkage for the state variances while maintaining the flexibility to accommodate local signals. A Bayesian estimation method is developed that employs the ancilarity-sufficiency interweaving strategy to boost sampling efficiency. Simulation study and an empirical application to forecast inflation rate illustrate the benefits of the proposed approach.

时变参数回归状态方差收缩贝叶斯先验随机游走潜变量