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ERROR-CORRECTION FACTOR MODELS FOR HIGH-DIMENSIONAL COINTEGRATED TIME SERIES

机译:高维结合时间序列的误差校正因子模型

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摘要

Cointegration inferences often rely on a correct specification for the short-run dynamic vector autoregression. However, this specification is unknown, a priori. A lag length that is too small leads to an erroneous inference as a result of the misspecification. In contrast, using too many lags leads to a dramatic increase in the number of parameters, especially when the dimension of the time series is high. In this paper, we develop a new methodology which adds an error-correction term for the long-run equilibrium to a latent factor model in order to model the short-run dynamic relationship. The inferences use the eigenanalysis-based methods to estimate the cointegration and latent factor process. The proposed error-correction factor model does not require an explicit specification of the short-run dynamics, and is particularly effective for high-dimensional cases, in which the standard error-correction suffers from overparametrization. In addition, the model improves the predictive performance of the pure factor model. The asymptotic properties of the proposed methods are established when the dimension of the time series is either fixed or diverging slowly as the length of the time series goes to infinity. Lastly, the performance of the model is evaluated using both simulated and real data sets.
机译:协整的推论通常依赖于短期动态传染媒介自动增加的正确规范。但是,这个规范是未知的,先验。由于误操作而导致太小的滞后长度导致错误推理。相比之下,使用太多滞后导致参数数量的显着增加,特别是当时间序列的尺寸高时。在本文中,我们开发了一种新的方法,该方法为潜在因子模型的长期平衡增加了纠错项,以便模拟短期动态关系。推断使用基于特征分析的方法来估计协整和潜在因子过程。所提出的纠错因子模型不需要明确的短期动态规范,并且对于高维例特别有效,其中标准误差校正遭受过正常化。此外,该模型提高了纯因子模型的预测性能。当时间序列的尺寸在时间序列的长度转到无限远处时,建立所提出的方法的渐近性能。最后,使用模拟和真实数据集来评估模型的性能。

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