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Erschienen in: OR Spectrum 3/2015

01.07.2015 | Regular Article

Approximating multivariate Markov chains for bootstrapping through contiguous partitions

verfasst von: Roy Cerqueti, Paolo Falbo, Gianfranco Guastaroba, Cristian Pelizzari

Erschienen in: OR Spectrum | Ausgabe 3/2015

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Abstract

This paper extends Markov chain bootstrapping to the case of multivariate continuous-valued stochastic processes. To this purpose, we follow the approach of searching an optimal partition of the state space of an observed (multivariate) time series. The optimization problem is based on a distance indicator calculated on the transition probabilities of the Markov chain. Such criterion aims at grouping those states exhibiting similar transition probabilities. A second methodological contribution is represented by the addition of a contiguity constraint, which is introduced to force the states to group only if they have “near” values (in the state space). This requirement meets two important aspects: first, it allows a more intuitive interpretation of the results; second, it contributes to control the complexity of the problem, which explodes with the cardinality of the states. The computational complexity of the optimization problem is also addressed through the introduction of a novel Tabu Search algorithm, which improves both the quality of the solution found and the computing times with respect to a similar heuristic previously advanced in the literature. The bootstrap method is applied to two empirical cases: the bivariate process of prices and volumes of electricity in the Spanish market; the trivariate process composed of prices and volumes of a US company stock (McDonald’s) and prices of the Dow Jones Industrial Average index. In addition, the method is compared with two other well-established bootstrap methods. The results show the good distributional properties of the present proposal, as well as a clear superiority in reproducing the dependence among the data.

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Fußnoten
1
A “0-1” matrix is a stochastic matrix whose rows contain zeros in all positions but one, where there is a \(1\).
 
2
To the sake of brevity, we do not report here an example of such transition probability matrix. The interested reader is referred to the illustrative example in Sect. 2.3 of Cerqueti et al. (2013) for a univariate case. Although the extension to the present multivariate setting would be straightforward, its representation would require involved notation without adding any new insights.
 
3
The singleton partition is provided as input of TSP1 for the first \(\epsilon \)-constraint problem.
 
4
These two numbers exclude the last 2-trajectories, because they do not evolve to any realization of the process.
 
5
The maximum value of the bootstrapped series to be matched with the threshold of \(70\) euros per MWh is calculated on the prices before adding trend and seasonality.
 
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Metadaten
Titel
Approximating multivariate Markov chains for bootstrapping through contiguous partitions
verfasst von
Roy Cerqueti
Paolo Falbo
Gianfranco Guastaroba
Cristian Pelizzari
Publikationsdatum
01.07.2015
Verlag
Springer Berlin Heidelberg
Erschienen in
OR Spectrum / Ausgabe 3/2015
Print ISSN: 0171-6468
Elektronische ISSN: 1436-6304
DOI
https://doi.org/10.1007/s00291-015-0397-8

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