In this paper, a variation of traditional Genetic Programming(GP) is used to model the MagnetoencephaloGram(MEG) of Epileptic Patients. This variation is Linear Genetic Programming(LGP). LGP is a particular subset of GP wherein computer programs in population are represented as a sequence of instructions from imperative programming language or machine language. The derived models from this method were simplified using genetic algorithms. The proposed method was used to model the MEG signal of epileptic patients using 6 different datasets. Each dataset uses different number of previous values of MEG to predict the next value. The models were tested in datasets different from the ones which were used to produce them and the results were very promising.
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9 September 2009
NUMERICAL ANALYSIS AND APPLIED MATHEMATICS: International Conference on Numerical Analysis and Applied Mathematics 2009: Volume 1 and Volume 2
18–22 September 2009
Rethymno, Crete (Greece)
Research Article|
September 09 2009
Modeling the MagnetoencephaloGram (MEG) Of Epileptic Patients Using Genetic Programming and Minimizing the Derived Models Using Genetic Algorithms Available to Purchase
Konstantinos Theofilatos;
Konstantinos Theofilatos
aPattern Recognition Laboratory, Department of Computer Engineering and Informatics, University of Patras, 265 00, Patras, Hellas
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Efstratios Georgopoulos;
Efstratios Georgopoulos
bTechnological Educational Institute of Kalamata, Kalamata, Hellas
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Spiridon Likothanassis
Spiridon Likothanassis
aPattern Recognition Laboratory, Department of Computer Engineering and Informatics, University of Patras, 265 00, Patras, Hellas
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Konstantinos Theofilatos
a
Efstratios Georgopoulos
b
Spiridon Likothanassis
a
aPattern Recognition Laboratory, Department of Computer Engineering and Informatics, University of Patras, 265 00, Patras, Hellas
bTechnological Educational Institute of Kalamata, Kalamata, Hellas
AIP Conf. Proc. 1168, 486–488 (2009)
Citation
Konstantinos Theofilatos, Efstratios Georgopoulos, Spiridon Likothanassis; Modeling the MagnetoencephaloGram (MEG) Of Epileptic Patients Using Genetic Programming and Minimizing the Derived Models Using Genetic Algorithms. AIP Conf. Proc. 9 September 2009; 1168 (1): 486–488. https://doi.org/10.1063/1.3241503
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