An Analysis of Integration of Hill Climbing in Crossover and Mutation operation for EEG Signal Classification
Created by W.Langdon from
gp-bibliography.bib Revision:1.8051
- @InProceedings{Bhardwaj:2015:GECCO,
-
author = "Arpit Bhardwaj and Aruna Tiwari and
M. Vishaal Varma and M. Ramesh Krishna",
-
title = "An Analysis of Integration of Hill Climbing in
Crossover and Mutation operation for EEG Signal
Classification",
-
booktitle = "GECCO '15: Proceedings of the 2015 Annual Conference
on Genetic and Evolutionary Computation",
-
year = "2015",
-
editor = "Sara Silva and Anna I Esparcia-Alcazar and
Manuel Lopez-Ibanez and Sanaz Mostaghim and Jon Timmis and
Christine Zarges and Luis Correia and Terence Soule and
Mario Giacobini and Ryan Urbanowicz and
Youhei Akimoto and Tobias Glasmachers and
Francisco {Fernandez de Vega} and Amy Hoover and Pedro Larranaga and
Marta Soto and Carlos Cotta and Francisco B. Pereira and
Julia Handl and Jan Koutnik and Antonio Gaspar-Cunha and
Heike Trautmann and Jean-Baptiste Mouret and
Sebastian Risi and Ernesto Costa and Oliver Schuetze and
Krzysztof Krawiec and Alberto Moraglio and
Julian F. Miller and Pawel Widera and Stefano Cagnoni and
JJ Merelo and Emma Hart and Leonardo Trujillo and
Marouane Kessentini and Gabriela Ochoa and Francisco Chicano and
Carola Doerr",
-
isbn13 = "978-1-4503-3472-3",
-
pages = "209--216",
-
keywords = "genetic algorithms, genetic programming, Biological
and Biomedical Applications",
-
month = "11-15 " # jul,
-
organisation = "SIGEVO",
-
address = "Madrid, Spain",
-
URL = "http://doi.acm.org/10.1145/2739480.2754710",
-
DOI = "doi:10.1145/2739480.2754710",
-
publisher = "ACM",
-
publisher_address = "New York, NY, USA",
-
abstract = "A common problem in the diagnosis of epilepsy is the
volatile and unpredictable nature of the epileptic
seizures. Hence, it is essential to develop Automatic
seizure detection methods. Genetic programming (GP) has
a potential for accurately predicting a seizure in an
EEG signal. However, the destructive nature of
crossover operator in GP decreases the accuracy of
predicting the onset of a seizure. Designing
constructive crossover and mutation operators (CCM) and
integrating local hill climbing search technique with
the GP have been put forward as solutions. In this
paper, we proposed a hybrid crossover and mutation
operator, which uses both the standard GP and CCM-GP,
to choose high performing individuals in the least
possible time. To demonstrate our approach, we tested
it on a benchmark EEG signal dataset. We also compared
and analysed the proposed hybrid crossover and mutation
operation with the other state of art GP methods in
terms of accuracy and training time. Our method has
shown remarkable classification results. These results
affirm the potential use of our method for accurately
predicting epileptic seizures in an EEG signal and hint
on the possibility of building a real time automatic
seizure detection system.",
-
notes = "Also known as \cite{2754710} GECCO-2015 A joint
meeting of the twenty fourth international conference
on genetic algorithms (ICGA-2015) and the twentith
annual genetic programming conference (GP-2015)",
- }
Genetic Programming entries for
Arpit Bhardwaj
Aruna Tiwari
M Vishaal Varma
M Ramesh Krishna
Citations