Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especially where time dependence is non linear. In this work we extend such approach to bootstrap discrete time continuous-valued processes. To this purpose we solve a minimization problem to partition the state space of a continuous-valued process into a nite number of intervals or unions of intervals (i.e. its states) and identify the time lags which provide \memory" to the process. A distance is used as objective function to stimulate the clustering of the states having similar transition probabilities. The problem of the exploding number of alternative partitions in the solution space (which grows with the number of states and the order of the M...
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...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, espec...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
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 highly nonlinear time series. ...
Markov chain theory is proving to be a powerful approach to bootstrap and simulate highly nonlinear ...
Markov chain theory is proving to be a powerful approach to bootstrap and simulate highly nonlinear ...
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...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap nite states processes, especia...
Markov chain theory is proving to be a powerful approach to bootstrap finite states processes, espec...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
Markov chain theory is proving to be a powerful approach to bootstrap highly nonlinear time series. ...
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 highly nonlinear time series. ...
Markov chain theory is proving to be a powerful approach to bootstrap and simulate highly nonlinear ...
Markov chain theory is proving to be a powerful approach to bootstrap and simulate highly nonlinear ...
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...