Bootstrapping time series is one of the most acknowledged tools to study the statistical properties of an evolutive phenomenon. An important class of bootstrapping methods is based on the assumption that the sampled phenomenon evolves according to a Markov chain. This assumption does not apply when the process takes values in a continuous set, as it frequently happens with time series related to economic and financial phenomena. In this paper we apply the Markov chain theory for bootstrapping continuous-valued processes, starting from a suitable discretization of the support that provides the state space of a Markov chain of order k≥1. Even for small k, the number of rows of the transition probability matrix is generally too large and, in m...
Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, espec...
In this thesis we deal with estimating the transition matrix probabilities of discrete time Markov c...
Markov chains provide a flexible model for dependent random variables with appli-cations in such dis...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
Bootstrapping time series is one of the most acknowledged tools to make forecasts and study the stat...
Bootstrapping time series is among the most acknowledged tools to study evolutive phenomena. In boot...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves f...
Econometric analysis is continuously challenged by the new requirements emerging in different fields...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, espec...
In this thesis we deal with estimating the transition matrix probabilities of discrete time Markov c...
Markov chains provide a flexible model for dependent random variables with appli-cations in such dis...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
Bootstrapping time series is one of the most acknowledged tools to study the statistical properties ...
Bootstrapping time series is one of the most acknowledged tools to make forecasts and study the stat...
Bootstrapping time series is among the most acknowledged tools to study evolutive phenomena. In boot...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves f...
Econometric analysis is continuously challenged by the new requirements emerging in different fields...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochast...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
In this work we develop a bootstrap method based on the theory of Markov chains. The method moves fr...
Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, espec...
In this thesis we deal with estimating the transition matrix probabilities of discrete time Markov c...
Markov chains provide a flexible model for dependent random variables with appli-cations in such dis...