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首页> 外文期刊>Journal of Time Series Analysis >NONLINEAR FACTOR-AUGMENTED PREDICTIVE REGRESSION MODELS WITH FUNCTIONAL COEFFICIENTS
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NONLINEAR FACTOR-AUGMENTED PREDICTIVE REGRESSION MODELS WITH FUNCTIONAL COEFFICIENTS

机译:具功能系数的非线性因子增强预测回归模型

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摘要

This article introduces a new class of functional-coefficient predictive regression models, where the regressors consist of auto-regressors and latent factor regressors, and the coefficients vary with certain index variable. The unobservable factor regressors are estimated through imposing an approximate factor model on high dimensional exogenous variables and subsequently implementing the classical principal component analysis. With the estimated factor regressors, a local linear smoothing method is used to estimate the coefficient functions (with appropriate rotation) and obtain a one-step ahead nonlinear forecast of the response variable, and then a wild bootstrap procedure is introduced to construct the prediction interval. Under regularity conditions, the asymptotic properties of the proposed methods are derived, showing that the local linear estimator and the nonlinear forecast using the estimated factor regressors are asymptotically equivalent to those using the true latent factor regressors. The developed model and methodology are further generalized to the factor-augmented vector predictive regression with functional coefficients. Finally, some extensive simulation studies and an empirical application to forecast the UK inflation are given to examine the finite-sample performance of the proposed model and methodology.
机译:本文介绍了一类新的功能系数预测回归模型,其中回归变量由自回归变量和潜在因子回归变量组成,系数随特定的索引变量而变化。通过在高维外生变量上施加近似因子模型并随后执行经典主成分分析来估计不可观察因子回归。利用估计的因子回归变量,使用局部线性平滑方法估计系数函数(适当旋转)并获得响应变量的单步提前非线性预测,然后引入野生自举程序构造预测区间。在规律性条件下,推导了所提出方法的渐近性质,表明使用估计因子回归的局部线性估计和非线性预测与使用真实潜在因子回归的渐近等效。所开发的模型和方法进一步推广到具有功能系数的因子增强矢量预测回归。最后,给出了一些广泛的模拟研究和预测英国通货膨胀的经验应用,以检验所提出模型和方法的有限样本性能。

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