灰狼算法优化的Kelm癫痫发作自动识别

D. Saranya, A. Bharathi
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引用次数: 1

摘要

癫痫是一种常见的神经系统疾病,神经细胞活动受到干扰,导致癫痫发作。癫痫发作自动检测是癫痫临床诊断的基本要求。对事实进行分类是机器学习中常见的任务。支持向量机(SVM)在癫痫发作识别中存在结果不透明等局限性。极限学习机在计算上并不复杂,并且由于其快速的学习速度而产生明确的结果,(ELM)用于选择输入数据。本研究的动机是为了提高ELM的训练率和正确率。选择核极限学习机(KELM)来改进泛化能力,并采用自然启发的群体智能灰狼算法(GWO)来提高分类精度。灰狼算法对KELM参数进行优化。将GWO-KELM分类器放在UCI的癫痫发作数据集上,并与传统分类器在学习精度、学习误差和分类精度等方面进行了实验比较。采用本文提出的GWO- KELM分类器进行分析,学习速度更快,准确率高,错误率低,在癫痫发作识别方面优于其他分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automatic Identification of Epileptic Seizure Using Kelm Optimized By Grey Wolf Algorithm
Epilepsy is the common neurological disorder where nerve cell activity is disturbed which results in causing seizures. Automatic epileptic seizure detection is an essential requirement for clinical diagnosis of epilepsy. Classifying facts is the usual task in machine learning. Epileptic seizure identification using Support Vector Machine (SVM) have few limitations like its outcomes lacks transparency. Extreme Learning machine is computationally uncomplicated and yields definite results also because of its quick learning pace, (ELM) is utilised to pick input data. The motivation of this research is to boost the training rate and correctness of the ELM. Kernel Extreme Learning Machine (KELM) is chosen for refining generalization capacity and to improve the classification accuracy nature inspired swarm intelligence Grey Wolf Algorithm (GWO) is adapted. The grey wolf algorithm optimizes the KELM parameters. The GWO-KELM classifier is laid on Epileptic Seizure Data Set from UCI and the experimental results such as learning accuracy, learning error and classification accuracy are compared with traditional classifiers. By performing analysis with the proposed GWO- KELM classifier faster learning speed, accuracy with high precision and low error rate is achieved and proposed classifier outperforms other classifiers in identification of epileptic seizures.
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