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Inference on stochastic time-varying coefficient models

机译:随机时变系数模型的推论

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Recently, there has been considerable work on stochastic time-varying coefficient models as vehicles for modelling structural change in the macroeconomy with a focus on the estimation of the unobserved paths of random coefficient processes. The dominant estimation methods, in this context, are based on various filters, such as the Kalman filter, that are applicable when the models are cast in state space representations. This paper introduces a new class of autoregressive bounded processes that decompose a time series into a persistent random attractor, a time varying autoregressive component, and martingale difference errors. The paper examines, rigorously, alternative kernel based, nonparametric estimation approaches for such models and derives their basic properties. These estimators have long been studied in the context of deterministic structural change, but their use in the presence of stochastic time variation is novel. The proposed inference methods have desirable properties such as consistency and asymptotic normality and allow a tractable studentization. In extensive Monte Carlo and empirical studies, we find that the methods exhibit very good small sample properties and can shed light on important empirical issues such as the evolution of inflation persistence and the purchasing power parity (PPP) hypothesis
机译:近来,在随机时变系数模型上已经进行了大量工作,作为对宏观经济中的结构变化进行建模的工具,重点是对随机系数过程未观察到的路径的估计。在这种情况下,主要的估计方法基于各种滤波器,例如卡尔曼滤波器,这些模型在状态空间表示中投射模型时适用。本文介绍了一类新的自回归有界过程,该过程将时间序列分解为持久随机吸引子,时变自回归分量和,差。本文严格检查了此类模型的基于替代内核的非参数估计方法,并推导了它们的基本属性。长期以来,已经在确定性结构变化的背景下研究了这些估计量,但是在随机时间变化的情况下使用它们是新颖的。所提出的推理方法具有期望的性质,例如一致性和渐近正态性,并允许易于学习。在广泛的蒙特卡洛和经验研究中,我们发现这些方法展现出非常好的小样本属性,并且可以揭示重要的经验问题,例如通货膨胀持续性的演变和购买力平价(PPP)假设。

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