基于主动样本选择的集成学习方法的睡眠阶段分类

Hamza Osman Ilhan, C. Avci
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引用次数: 1

摘要

在医学上,睡眠阶段是界定疾病的主要标准,在诊断中具有至关重要的作用。从这个意义上说,准确的睡眠阶段分类对于提供更好的药物和诊断报告具有重要作用。本研究采用基于规则的机器学习算法对脑电信号进行分类;此外,在学习过程中采用严格区分和边缘距离的两种主动样本选择技术,以更少的样本获得更准确的结果。本文证明了采用主动样本选择技术的集成学习算法在阶段确定上取得了较好的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sleep stage classification by ensemble learning methods with active sample selection techniques
In medical science, sleep stages are the main criteria to define the disorders and have crucial role on diagnostic. In this sense, accurate sleep stage classification plays important role due to provide better report on medications and diagnoses. In this study, EEG signals are classified by a rule based machine learning algorithm; Decision Tree with the ensemble and classical machine learning idea. Additionally, two of active sample selection technique using the idea of strictly separated discrimination and margin distances are applied on learning processes to obtain more accurate results with less samples. This paper proves that ensemble learning algorithms with one of the implemented active sample selection technique gives more successful result on the determination of stages.
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