Publication | Closed Access
Optimized feature subsets for epileptic seizure prediction studies
27
Citations
11
References
2011
Year
Unknown Venue
EngineeringMachine LearningFeature SelectionSocial SciencesSupport Vector MachineData ScienceData MiningPattern RecognitionFeature SubsetsNeuroinformaticsPredictive AnalyticsNeuroimagingSeizure PredictorsEeg FeaturesData ClassificationComputational NeuroscienceReal-time WarningEeg Signal ProcessingNeuroscienceBraincomputer Interface
The reduction of the number of EEG features to give as inputs to epilepsy seizure predictors is a needed step towards the development of a transportable device for real-time warning. This paper presents a comparative study of three feature selection methods, based on Support Vector Machines. Minimum-Redundancy Maximum-Relevance, Recursive Feature Elimination, Genetic Algorithms, show that, for three patients of the European Database on Epilepsy, the most important univariate features are related to spectral information and statistical moments.
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