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Published in: Soft Computing 1/2010

01-01-2010 | Original Paper

Genetic hybrid tuning of VARMAX and state space algorithms

Author: Ralf Östermark

Published in: Soft Computing | Issue 1/2010

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Abstract

The aim of the study was to monitor the system theoretic exogenous variables augmented state space algorithm of Aoki (State space modelling of time series. Springer, Heidelberg, 1987) and the VARMAX algorithm of Spliid (J Am Stat Assoc 78(384):843–849, 1983) within a geno-mathematical framework towards optimal parametric conditions/search intervals. Both algorithms were implemented as an integrated support library for a general computational platform, the Genetic Hybrid Algorithm (GHA), where some key parameters of the algorithms are defined in a search process utilizing a mixed geno-mathematical search technique. The empirical results of our tests using real economic data from the European stock market are encouraging. Specifically, the information criteria used in the VARMAX-search (Vector Autoregressive Moving Average algorithm with Exogenous variables) algorithm tend to favor parsimonious model representations automatically. Furthermore, the state space algorithm captures almost the same dynamics as the complex VARMAX-model estimated in the study. Both algorithms have encouraging in sample properties. When generating k-steps forecasts out-of-sample, k > 1, the state space algorithm seems to deteriorate faster than the VARMAX algorithm, however. The results suggest that more empirical testing is needed, especially in different situations with different degrees of model order and stationarity conditions, in order to provide more evidence on the suitability of the competing methods in particular cases. We demonstrated that the Genetic Hybrid Algorithm can be used as a generic platform for parametric search in vector valued time series modelling. Efficient procedures for optimal grouping of the individual time series processes and recognition of heteroskedasticity may improve the performance of the algorithms further.

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Appendix
Available only for authorised users
Footnotes
1
The Eigen-mass limit 0.01 means that all eigenvalues with proportion \( \frac{{\mathop \lambda \nolimits_{i} }}{{\sum\nolimits_{j = 1}^{h} {\mathop \lambda \nolimits_{j} } }} > 0.01\) are considered to be large.
 
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Metadata
Title
Genetic hybrid tuning of VARMAX and state space algorithms
Author
Ralf Östermark
Publication date
01-01-2010
Publisher
Springer-Verlag
Published in
Soft Computing / Issue 1/2010
Print ISSN: 1432-7643
Electronic ISSN: 1433-7479
DOI
https://doi.org/10.1007/s00500-008-0393-x

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