A very common practice when extracting factors from non-stationary multivariate timeseries is to differentiate each variable in the system. As a consequence, the ratiobetween variances and the dynamic dependence of the common and idiosyncraticdifferentiated components may change with respect to the original components. In thispaper, we analyze the effects of these changes on the finite sample properties of somepopular procedures to determine the number of factors. In particular, we consider theinformation criteria of Bai and Ng (2002), the edge distribution of Onastki (2010) andthe ratios of eigenvalues proposed by Ahn and Horenstein (2013). The performance ofthese procedures when implemented to differentiated variables depend on both thera...
Dynamic factor models (DFMs), which assume the existence of a small number of unobserved underlying ...
In this thesis we analysed the problem of a single structural change occurring at some unknown data ...
This article surveys work on a class of models, dynamic factor models (DFMs), that has received cons...
A very common practice when extracting factors from non-stationary multivariate timeseries is to dif...
This dissertation focuses on studying two topics of large non-stationary Dynamic Factor Models (DFM...
In this paper we introduce three dynamic eigenvalue ratio estimators for the number of dynamic fact...
In this paper we introduce three dynamic eigenvalue ratio estimators for the number of dynamic facto...
We develop a new consistent and simple to compute estimator of the number of factors in the approxim...
Dynamic factor models have been the main ‘‘big data’’ tool used by empirical macroeconomists during...
In this paper, we analyze and compare the finite sample properties of alternative factor extraction ...
In this paper, we analyze and compare the finite sample properties of alternative factor extraction ...
This paper derives a new criterion for the determination of the number of factors in static approxim...
In the context of Dynamic Factor Models (DFM), we compare point and interval estimates of the underl...
This paper proposes a procedure to estimate the number of common factors k in a static approximate f...
Dynamic factor models (DFMs), which assume the existence of a small number of unobserved underlying ...
In this thesis we analysed the problem of a single structural change occurring at some unknown data ...
This article surveys work on a class of models, dynamic factor models (DFMs), that has received cons...
A very common practice when extracting factors from non-stationary multivariate timeseries is to dif...
This dissertation focuses on studying two topics of large non-stationary Dynamic Factor Models (DFM...
In this paper we introduce three dynamic eigenvalue ratio estimators for the number of dynamic fact...
In this paper we introduce three dynamic eigenvalue ratio estimators for the number of dynamic facto...
We develop a new consistent and simple to compute estimator of the number of factors in the approxim...
Dynamic factor models have been the main ‘‘big data’’ tool used by empirical macroeconomists during...
In this paper, we analyze and compare the finite sample properties of alternative factor extraction ...
In this paper, we analyze and compare the finite sample properties of alternative factor extraction ...
This paper derives a new criterion for the determination of the number of factors in static approxim...
In the context of Dynamic Factor Models (DFM), we compare point and interval estimates of the underl...
This paper proposes a procedure to estimate the number of common factors k in a static approximate f...
Dynamic factor models (DFMs), which assume the existence of a small number of unobserved underlying ...
In this thesis we analysed the problem of a single structural change occurring at some unknown data ...
This article surveys work on a class of models, dynamic factor models (DFMs), that has received cons...