We introduce a generalization of the approximate factor model that divides the observable variables into groups, allows for arbitrarily strong cross-correlation between the disturbance terms of variables that belong to the same group, and for weak correlation between the disturbances of variables that belong to different groups. We call this model the Grouped Variable Approximate Factor Model. We establish identification, propose an estimation approach based on instrumental variable conditions that hold in the limit, and prove consistency in a dual limit framework. Monte Carlo simulations are used to investigate the performance of the estimator, and the techniques are applied to an analysis of industrial output in the US.20 page(s
This paper proposes a method for modelling volatilities (conditional covariance matrices) of high di...
In this paper we propose a new approximate factor model for large cross-section and time dimensions....
The purpose of this article is to develop the dimension reduction techniques in panel data analysis ...
AbstractWe introduce a generalization of the approximate factor model that divides the observable va...
We introduce a generalization of the approximate factor model for which the observable variables bel...
ABSTRACT: The use of principal component techniques to estimate approximate factor models with large...
This thesis presents the results of research into the use of factor models for stationary economic t...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
Factor models are a very efficient way to describe high-dimensional vectors of data in terms of a sm...
In this paper we present a grouped factor model that is designed to explore grouped structures in fa...
This dissertation examines some prediction and estimations problems that arise in "high dimensions",...
A class of linear classification rules, specifically designed for high-dimensional problems, is pro...
This paper proposes a factor model with infinite dynamics and non-orthogonal idiosyncratic component...
In this paper we propose a new approximate factor model for large cross-section and time dimensions....
This paper proposes a method for modelling volatilities (conditional covariance matrices) of high di...
In this paper we propose a new approximate factor model for large cross-section and time dimensions....
The purpose of this article is to develop the dimension reduction techniques in panel data analysis ...
AbstractWe introduce a generalization of the approximate factor model that divides the observable va...
We introduce a generalization of the approximate factor model for which the observable variables bel...
ABSTRACT: The use of principal component techniques to estimate approximate factor models with large...
This thesis presents the results of research into the use of factor models for stationary economic t...
This thesis which consists of four papers is concerned with estimation methods in factor analysis an...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
Factor models are a very efficient way to describe high-dimensional vectors of data in terms of a sm...
In this paper we present a grouped factor model that is designed to explore grouped structures in fa...
This dissertation examines some prediction and estimations problems that arise in "high dimensions",...
A class of linear classification rules, specifically designed for high-dimensional problems, is pro...
This paper proposes a factor model with infinite dynamics and non-orthogonal idiosyncratic component...
In this paper we propose a new approximate factor model for large cross-section and time dimensions....
This paper proposes a method for modelling volatilities (conditional covariance matrices) of high di...
In this paper we propose a new approximate factor model for large cross-section and time dimensions....
The purpose of this article is to develop the dimension reduction techniques in panel data analysis ...