Time-varying parameters (TVPs) models are frequently used in economics to capture structural change. I highlight a rather underutilized fact -- that these are actually ridge regressions. Instantly, this makes computations, tuning, and implementation much easier than in the state-space paradigm. Among other things, solving the equivalent dual ridge problem is computationally very fast even in high dimensions, and the crucial "amount of time variation" is tuned by cross-validation. Evolving volatility is dealt with using a two-step ridge regression. I consider extensions that incorporate sparsity (the algorithm selects which parameters vary and which do not) and reduced-rank restrictions (variation is tied to a factor model). To demonstrate the usefulness of the approach, I use it to study the evolution of monetary policy in Canada using large time-varying local projections. The application requires the estimation of about 4600 TVPs, a task well within the reach of the new method.
翻译:时间变化系数模型(TVPs)在经济学中被广泛用于捕捉结构变化。我强调了一个被低估的事实——这些实际上是 Ridge 回归模型。这使计算、调整和实施比状态空间范式更加容易。在高维情况下,解决等价的对偶 Ridge 问题的计算非常快速,至关重要的“时间变化量”由交叉验证调整。采用两步 Ridge 回归来处理演化的波动性。我考虑了一些扩展,包括稀疏性(算法选择哪些参数变化,哪些不变化)和降低秩限制(变化与因子模型相关联)。为了展示这种方法的实用性,我使用它来研究加拿大货币政策的演变,采用大规模时间变化局部预测估计约4600个TVPs,这是这一新方法的一个好例子。