This thesis defines a new class of vector-valued stochastic processes, called MARM (Multivariate Autoregressive Modular) Processes. It describes the construction of two flavors of MARM processes, MARM+ and MARM−, studies the statistics of MARM processes (transition structure and second order statistics), and devises MARM-based fitting and forecasting algorithms providing point estimators and confidence intervals. The key advantage of MARM processes is their ability to fit a strong statistical signature consisting of empirical first-order and second-order statistics simultaneously. More precisely, MARM processes exactly fit arbitrary multi-dimensional empirical histograms and approximately fit the leading empirical autocorrelations and cr...
Abstract. A multivariate Lévy-driven continuous time autoregressive moving average (CARMA) model of ...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
In this paper we discuss stochastic models for vector processes, in particular the class of multivar...
We develop a method for constructing confidence regions on the mean vectors of multivariate processe...
The autoregressive random variance (ARV) model proposed by Taylor (Financial returns modelled by the...
We examine the conditions under which each individual series that is generated by a vector autoregre...
Vector or multivariate autoregression is a statistical model for random processes. It is relatively ...
Vector Auto-regressive (VAR) models are commonly used for modelling multivariate time series and the...
In the presented work vector autoregression (VAR) models of finite order are examined. The main part...
This paper proposes a new approach to analyze multiple vector autoregressive (VAR) models that rende...
Autoregressive (AR) and autoregressive moving average (ARMA) processes with multivariate exponential...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
Time series analysis is used to predict future behaviour of processes and is widely used in the fina...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
Abstract. A multivariate Lévy-driven continuous time autoregressive moving average (CARMA) model of ...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
In this paper we discuss stochastic models for vector processes, in particular the class of multivar...
We develop a method for constructing confidence regions on the mean vectors of multivariate processe...
The autoregressive random variance (ARV) model proposed by Taylor (Financial returns modelled by the...
We examine the conditions under which each individual series that is generated by a vector autoregre...
Vector or multivariate autoregression is a statistical model for random processes. It is relatively ...
Vector Auto-regressive (VAR) models are commonly used for modelling multivariate time series and the...
In the presented work vector autoregression (VAR) models of finite order are examined. The main part...
This paper proposes a new approach to analyze multiple vector autoregressive (VAR) models that rende...
Autoregressive (AR) and autoregressive moving average (ARMA) processes with multivariate exponential...
Two new methods for improving prediction regions in the context of vector autoregressive (VAR) model...
In this paper, we reconsider the mixture vector autoregressive model, which was proposed in the lite...
Time series analysis is used to predict future behaviour of processes and is widely used in the fina...
We generalize the Gaussian mixture transition distribution (GMTD) model introduced by Le and co-work...
Abstract. A multivariate Lévy-driven continuous time autoregressive moving average (CARMA) model of ...
In the following thesis, we investigate the modeling of time series data with multivariate discrete ...
In this paper we discuss stochastic models for vector processes, in particular the class of multivar...