针对类不平衡问题改进癫痫检测方法

Siddhartha Haldar, R. Mukherjee, Pushpak Chakraborty, Shayan Banerjee, Shreyaasha Chaudhury, Sankhadeen Chatterjee
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引用次数: 4

摘要

神经系统疾病的早期可靠检测对于有效治疗患者非常重要。尽管在癫痫发作的早期检测领域做了大量的研究,但仍然缺乏一个有效的预测模型。基于此,本研究解决了将患者分为健康患者和癫痫患者的类不平衡问题。两种成熟的算法,即合成少数过采样技术(SMOTE)和选择性预处理不平衡数据算法(SPIDER)被用于对抗不平衡类。然后,使用KNN、SVM和MLP-FFN三种不同的分类器进行分类任务。实验结果表明,处理不平衡类可以在很大程度上提高分类精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improved Epilepsy Detection method by addressing Class Imbalance Problem
Early and reliable detection of neurological disorders is important for effective treatment of patients. In spite of reasonable amount of research done in the field of early detection of epileptic seizure, still an effective model for predicting the same is absent. Motivated by this, in the current study the class imbalance problem associated with classification of patients into healthy and epilepsy affected ones is addressed. Two well established algorithms namely Synthetic Minority Oversampling Technique (SMOTE) and Selective Pre-Processing of Imbalanced Data Algorithm (SPIDER) have been used in order to combat the imbalanced classes. Afterwards, three different classifiers namely KNN, SVM and MLP-FFN have been used for the classification task. Experimental results revealed that addressing imbalances classes improved the classification accuracy to a greater extent.
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