In this work we develop a bootstrap method based on the theory of Markov chains. The method moves from the two competing objectives that a researcher pursues when performing a bootstrap procedure: (i) to preserve the structural similarity – in statistical sense – between the original and the bootstrapped sample; (ii) to assure a diversification of the latter with respect to the former. The original sample is assumed to be driven by a Markov chain. The approach we follow is to implement an optimization problem to estimate the memory of a Markov chain (i.e. its order) and to identify its relevant states. The basic ingredients of the model are the transition probabilities, whose distance is measured through a suitably defined functional. We apply the method to the series of electricity prices in Spain. A comparison with the Variable Length Markov Chain bootstrap, which is a well established bootstrap method, shows the superiority of our proposal in reproducing the dependence among data.

Approximating Markov Chains for Bootstrapping and Simulation / Cerqueti, Roy; Falbo, Paolo; Guastaroba, Gianfranco; Pelizzari, Cristian. - (2015), pp. 371-379. [10.1007/978-3-319-13881-7_41].

Approximating Markov Chains for Bootstrapping and Simulation

CERQUETI, ROY;
2015

Abstract

In this work we develop a bootstrap method based on the theory of Markov chains. The method moves from the two competing objectives that a researcher pursues when performing a bootstrap procedure: (i) to preserve the structural similarity – in statistical sense – between the original and the bootstrapped sample; (ii) to assure a diversification of the latter with respect to the former. The original sample is assumed to be driven by a Markov chain. The approach we follow is to implement an optimization problem to estimate the memory of a Markov chain (i.e. its order) and to identify its relevant states. The basic ingredients of the model are the transition probabilities, whose distance is measured through a suitably defined functional. We apply the method to the series of electricity prices in Spain. A comparison with the Variable Length Markov Chain bootstrap, which is a well established bootstrap method, shows the superiority of our proposal in reproducing the dependence among data.
2015
Stochastic Models, Statistics and Their Applications
978-3-319-13880-0
none
02 Pubblicazione su volume::02a Capitolo o Articolo
Approximating Markov Chains for Bootstrapping and Simulation / Cerqueti, Roy; Falbo, Paolo; Guastaroba, Gianfranco; Pelizzari, Cristian. - (2015), pp. 371-379. [10.1007/978-3-319-13881-7_41].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11573/1364480
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