稀疏向量自回归特质分量因子模型

IF 1.5 3区 经济学 Q2 ECONOMICS
Jonas Krampe, Luca Margaritella
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引用次数: 0

摘要

我们通过利用两者的积极方面来调和密集和稀疏建模。我们采用一个高维的近似静态因子模型,并假设特质项遵循稀疏向量自回归模型(VAR)。估计分为两个步骤:(i)通过主成分分析(PCA)估计因子和负荷;(ii)通过对(i)估计的特质分量的套索估计稀疏VAR。步骤(ii)允许对因素估计后留下的横截面和时间依赖性进行建模。我们证明了这种方法在时间和截面尺寸发散时的一致性。在(ii)中,稀疏性被允许是非常一般的:近似的,逐行的,并且随着样本量的增长而增长。但是,需要考虑(i)的估计误差。我们不是简单地插入为(i)中的因素的PCA估计而导出的标准比率,而是推导出误差的精炼表达式,这使我们能够为(ii)中的套索推导出更严格的比率。讨论了在预测方面的应用;因子增强回归,并提出了使用美联储经济数据-月度数据库(FRED-MD)进行宏观经济预测的实证应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Factor Models With Sparse Vector Autoregressive Idiosyncratic Components

Factor Models With Sparse Vector Autoregressive Idiosyncratic Components

We reconcile dense and sparse modelling by exploiting the positive aspects of both. We employ a high-dimensional, approximate static factor model and assume the idiosyncratic term follows a sparse vector autoregressive model (VAR). The estimation is articulated in two steps: (i) factors and loadings are estimated via principal component analysis (PCA); (ii) a sparse VAR is estimated via the lasso on the estimated idiosyncratic components from (i). Step (ii) allows to model cross-sectional and time dependence left after the factors estimation. We prove the consistency of this approach as the time and cross-sectional dimensions diverge. In (ii), sparsity is allowed to be very general: approximate, row-wise, and growing with the sample size. However, the estimation error of (i) needs to be accounted for. Instead of simply plugging-in the standard rates derived for the PCA estimation of the factors in (i), we derive a refined expression of the error, which enables us to derive tighter rates for the lasso in (ii). We discuss applications on forecasting & factor-augmented regression and present an empirical application on macroeconomic forecasting using the Federal Reserve Economic Data - Monthly Database (FRED-MD).

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来源期刊
Oxford Bulletin of Economics and Statistics
Oxford Bulletin of Economics and Statistics 管理科学-统计学与概率论
CiteScore
5.10
自引率
0.00%
发文量
54
审稿时长
>12 weeks
期刊介绍: Whilst the Oxford Bulletin of Economics and Statistics publishes papers in all areas of applied economics, emphasis is placed on the practical importance, theoretical interest and policy-relevance of their substantive results, as well as on the methodology and technical competence of the research. Contributions on the topical issues of economic policy and the testing of currently controversial economic theories are encouraged, as well as more empirical research on both developed and developing countries.
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