Vector autoregressive (VAR) models assume linearity between the endogenous variables and their lags. This assumption might be overly restrictive and could have a deleterious impact on forecasting accuracy. As a solution, we propose combining VAR with Bayesian additive regression tree (BART) models. The resulting Bayesian additive vector autoregressive tree (BAVART) model is capable of capturing arbitrary non-linear relations between the endogenous variables and the covariates without much input from the researcher. Since controlling for heteroscedasticity is key for producing precise density forecasts, our model allows for stochastic volatility in the errors. We apply our model to two datasets. The first application shows that the BAVART model yields highly competitive forecasts of the US term structure of interest rates. In a second application, we estimate our model using a moderately sized Eurozone dataset to investigate the dynamic effects of uncertainty on the economy.
翻译:矢量自动递减模型(VAR)假定内生变量和内生变量之间的线性。这一假设可能限制性过强,可能对预测准确性产生有害影响。作为一个解决方案,我们提议将VAR与贝叶西亚添加回归树模型(BART)合并。由此形成的贝叶西亚添加性矢量自动递减树模型(BAVART)能够捕捉内生变量和共变体之间任意的非线性关系,而研究者没有提供大量投入。由于控制内生变量是精确密度预测的关键,因此我们的模型允许误差发生随机性波动。我们将我们的模型应用于两个数据集。第一个应用程序显示,BAVARART模型产生了美国利率术语结构的高度竞争性预测。在第二个应用中,我们用中度的欧洲区数据集估算我们的模型,以调查不确定性对经济的动态影响。