首页> 外文会议>2011 IEEE Recent Advances in Intelligent Computational Systems >Performance analysis of fuzzy techniques hierarchical aggregation functions decision trees and Support Vector Machine (SVM)for the classification of epilepsy risk levels from EEG signals
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Performance analysis of fuzzy techniques hierarchical aggregation functions decision trees and Support Vector Machine (SVM)for the classification of epilepsy risk levels from EEG signals

机译:模糊技术的层次聚合函数决策树和支持向量机(SVM)对EEG信号进行癫痫风险等级分类的性能分析

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The objective of this paper is to compare the performance of Hierarchical Soft (max-min) Decision Trees and Support Vector Machine (SVM) in optimization of fuzzy outputs for the classification of epilepsy risk levels from EEG (Electroencephalogram) signals. The fuzzy pre classifier is used to classify the risk levels of epilepsy based on extracted parameters like energy, variance, peaks, sharp and spike waves, duration, events and covariance from the EEG signals of the patient. Hierarchical Soft Decision Tree (HDT post classifiers with max-min criteria of four types) and Support Vector Machine (SVM) are applied on the classified data to identify the optimized risk level (singleton) which characterizes the patient's risk level. The efficacy of the above methods is compared based on the bench mark parameters such as Performance Index (PI), and Quality Value (QV).
机译:本文的目的是比较分层软(最大-最小)决策树和支持向量机(SVM)在模糊输出的优化中的性能,以根据EEG(脑电图)信号对癫痫风险水平进行分类。模糊预分类器用于根据提取的参数(例如能量,方差,峰值,尖峰波和尖峰波,持续时间,事件和患者的EEG信号的协方差)对癫痫的风险等级进行分类。分层软决策树(具有最大-最小标准的四种HDT后分类器)和支持向量机(SVM)应用于分类后的数据,以识别表征患者风险水平的最佳风险水平(单一)。根据性能指标(PI)和质量值(QV)等基准参数比较上述方法的效果。

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