Using a state-space system, I forecasted the US Treasury yields by employing frequentist and Bayesian methods after first decomposing the yields of varying maturities into its unobserved term structure factors. Then, I exploited the structure of the state-space model to forecast the Treasury yields and compared the forecast performance of each model using mean squared forecast error. Among the frequentist methods, I applied the two-step Diebold-Li, two-step principal components, and one-step Kalman filter approaches. Likewise, I imposed the five different priors in Bayesian VARs: Diffuse, Minnesota, natural conjugate, the independent normal inverse: Wishart, and the stochastic search variable selection priors. After forecasting the Treasury yields for 9 different forecast horizons, I found that the BVAR with Minnesota prior generally minimizes the loss function. I augmented the above BVARs by including macroeconomic variables and constructed impulse response functions with a recursive ordering identification scheme. Finally, I fitted a sign-restricted BVAR with dummy observations.
翻译:我使用州空间系统预测美国国库的产量,先是将不同期限的产量分解为无法观察的术语结构因素,然后我利用州空间模型的结构预测国库的产量,然后用平均平方预测错误比较每个模型的预测性能。在州空间系统中,我采用了两步Diebold-Li、两步主要构件和一步Kalman过滤法。同样,我在Bayesian VARs采用了五个不同的前科:Diffuse、明尼苏达、自然合金、独立的正常反向:Wishart和随机搜索变量选择前科。在预测国库9个不同的预测性前景后,我发现与明尼苏达的BVAR通常将损失功能降到最低程度。我通过包含宏观经济变量和以循环性指令识别办法构建了脉冲响应功能,从而扩大了上述BVARs。最后,我用假的观察做了标限制BVAR。