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Semi-supervised Learning for Dynamic Modeling of Brain Signals During Visual and Auditory Tests

机译:在视觉和听觉测试过程中脑信号动态建模的半监督学习

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Requirements of costly data labeling for data classification are relaxed with semi-supervised learning. This is particularly useful considering monitoring of a physiological process that continuously produces data and can be observed for a long time. We propose a new expectation-maximization (EM) procedure that implements semi-supervised learning and it is based on sequential independent component analysis modeling (SICAMM), that we have called EM-SICAMM. This procedure is applied for dynamic modeling of EEG signals measured from epileptic patients during visual and auditory neuropsychological tests. Those tests are done to evaluate the learning and memory cognitive function of the patients. Classification results demonstrate that EM-SICAMM outperforms, in terms of balanced error rate (BER) and kappa index, the following competitive methods: ICAMM, SICAMM, Gaussian mixture model (GMM), and hidden Markov model (HMM).
机译:使用半监督学习可以放宽对数据分类进行昂贵的数据标记的要求。考虑到监视连续产生数据并可以长时间观察的生理过程,这特别有用。我们提出了一种新的期望最大化(EM)程序,该程序实现了半监督学习,它基于顺序独立成分分析模型(SICAMM),我们称之为EM-SICAMM。此程序适用于在视觉和听觉神经心理学测试中从癫痫患者中测得的EEG信号的动态建模。进行那些测试以评估患者的学习和记忆认知功能。分类结果表明,在平衡错误率(BER)和kappa指数方面,EM-SICAMM优于以下竞争方法:ICAMM,SICAMM,高斯混合模型(GMM)和隐马尔可夫模型(HMM)。

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