This paper proposes maximum (quasi)likelihood estimation for high dimensional factor models with regime switching in the loadings. The model parameters are estimated jointly by EM algorithm, which in the current context only requires iteratively calculating regime probabilities and principal components of the weighted sample covariance matrix. When regime dynamics are taken into account, smoothed regime probabilities are calculated using a recursive algorithm. Consistency, convergence rates and limit distributions of the estimated loadings and the estimated factors are established under weak cross-sectional and temporal dependence as well as heteroscedasticity. It is worth noting that due to high dimension, regime switching can be identifie...
We provide a general theory of the expectation-maximization (EM) algorithm for inferring high dimens...
This dissertation consists of three chapters on high-dimensional Markov regime-switching and linear ...
In high-dimensional factor models, both the factor loadings and the number of factors may change ove...
This paper proposes maximum (quasi)likelihood estimation for high dimensional factor models with reg...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
This paper proposes a method for modelling volatilities (conditional covariance matrices) of high di...
In this paper, we develop a two-step maximum likelihood estimator of time-varying loadings in high-d...
We develop methods for Bayesian inference in vector error correction models which are subject to a v...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
This paper tackles the identification and estimation of a high dimensional factor model with unknown...
Economic modeling in a data-rich environment is often challenging. To allow for enough flexibility a...
This article considers the estimation of dynamic exogenous switching regression models and dynamic e...
Since several decades, researchers have been interested in various types of generalized regres-sion ...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
<p>We introduce a new approach for the estimation of high-dimensional factor models with regime-swit...
We provide a general theory of the expectation-maximization (EM) algorithm for inferring high dimens...
This dissertation consists of three chapters on high-dimensional Markov regime-switching and linear ...
In high-dimensional factor models, both the factor loadings and the number of factors may change ove...
This paper proposes maximum (quasi)likelihood estimation for high dimensional factor models with reg...
This paper proposes an infinite dimension Markov switching model to accommo-date regime switching an...
This paper proposes a method for modelling volatilities (conditional covariance matrices) of high di...
In this paper, we develop a two-step maximum likelihood estimator of time-varying loadings in high-d...
We develop methods for Bayesian inference in vector error correction models which are subject to a v...
This paper considers the estimation and inference of the low-rank components in high-dimensional mat...
This paper tackles the identification and estimation of a high dimensional factor model with unknown...
Economic modeling in a data-rich environment is often challenging. To allow for enough flexibility a...
This article considers the estimation of dynamic exogenous switching regression models and dynamic e...
Since several decades, researchers have been interested in various types of generalized regres-sion ...
This paper considers maximum likelihood (ML) estimation in a large class of models with hidden Marko...
<p>We introduce a new approach for the estimation of high-dimensional factor models with regime-swit...
We provide a general theory of the expectation-maximization (EM) algorithm for inferring high dimens...
This dissertation consists of three chapters on high-dimensional Markov regime-switching and linear ...
In high-dimensional factor models, both the factor loadings and the number of factors may change ove...