Dynamic factor models: Does the specification matter?

IF 1.7 4区 经济学 Q2 ECONOMICS Series-Journal of the Spanish Economic Association Pub Date : 2022-01-01 Epub Date: 2021-11-23 DOI:10.1007/s13209-021-00248-2
Karen Miranda, Pilar Poncela, Esther Ruiz
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引用次数: 2

Abstract

Dynamic factor models (DFMs), which assume the existence of a small number of unobserved underlying factors common to a large number of variables, are very popular among empirical macroeconomists. Factors can be extracted using either nonparametric principal components or parametric Kalman filter and smoothing procedures, with the former being computationally simpler and robust against misspecification and the latter coping in a natural way with missing and mixed-frequency data, time-varying parameters, nonlinearities and non-stationarity, among many other stylized facts often observed in real systems of economic variables. This paper analyses the empirical consequences on factor estimation, in-sample predictions and out-of-sample forecasting of using alternative estimators of the DFM under various sources of potential misspecification. In particular, we consider factor extraction when assuming different number of factors and different factor dynamics. The factors are extracted from a popular data base of US macroeconomic variables, widely analyzed in the literature without consensus about the most appropriate model specification. We show that this lack of consensus is only marginally crucial when it comes to factor extraction, but it matters when the objective is out-of-sample forecasting.

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动态因素模型:规范重要吗?
动态因素模型(dms)是实证宏观经济学家中非常流行的一种模型,它假设存在大量变量共有的少数未观察到的潜在因素。可以使用非参数主成分或参数卡尔曼滤波和平滑程序提取因子,前者计算更简单,对错误规范具有鲁棒性,后者以自然的方式处理缺失和混合频率数据、时变参数、非线性和非平稳性,以及在实际经济变量系统中经常观察到的许多其他程式化事实。本文分析了在各种潜在的错误规范来源下,使用DFM的替代估计量对因子估计、样本内预测和样本外预测的经验后果。特别是在假设不同数量的因子和不同的因子动态时,我们考虑了因子提取。这些因素是从一个流行的美国宏观经济变量数据库中提取出来的,在文献中进行了广泛的分析,但没有就最合适的模型规格达成共识。我们表明,当涉及到因素提取时,这种共识的缺乏只是略微至关重要,但当目标是样本外预测时,它很重要。
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来源期刊
CiteScore
2.30
自引率
7.70%
发文量
10
审稿时长
13 weeks
期刊介绍: SERIEs is a single-blind peer-reviewed open access journal. In the Journal Citation Reports (JCR) the impact factor of the journal in 2020 is 1.088 and, in Scopus, we are in the top quartile according to Scimago Journal Ranking and the CiteScores. SERIEs - Journal of the Spanish Economic Association is the result of a merger between the two most important academic economics journals in Spain: Spanish Economic Review (SER) and Investigaciones Económicas (IE). The new journal publishes scientific articles in all areas of economics. We welcome both theoretical and empirical papers and place great value on applying high quality standards. SERIEs seeks to maintain the reputation gained by its predecessors as the most prominent economics journals in Spain, and to become a major internationally recognized journal. The journal is receptive to high-quality papers on any topic and from any source. At the same time, as official journal of the Spanish Economic Association, SERIEs is very interested in high-quality empirical papers about the Spanish and the European economy. The publication costs are covered by Spanish Economic Association so authors do not need to pay an article-processing charge. The journal operates a single-blind peer-review system, where the reviewers are aware of the names and affiliations of the authors, but the reviewer reports provided to authors are anonymous. SERIEs encourages authors to share their data where possible. For further details on the data policy for the journal please see the Springer Nature page here: https://www.springernature.com/gp/authors/research-data-policy/repositories-general/12327166 Officially cited as: SERIEs-Journal of the Spanish Economic Association
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