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Brain Neural Data Analysis with Feature Space Defined by Descriptive Statistics

机译:脑神经数据分析与描述性统计所定义的特征空间

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We consider learning to discriminate emotional states of human subjects, based on their brain activity observed via Electroencephalogram (EEG). EEG signals are collected while subjects were viewing high arousal images with positive or negative emotional content. This problem is important because such classifiers constitute "virtual sensors" of hidden emotional states, which are useful in psychology science research and clinical applications. The feature selection has a major role. Recently we have proposed a sequential feature selection (SFS) procedure that reduced the inherent data variability among subjects and led to a high inter-subject emotion recognition accuracy (98 %). However the SFS is a computationally intensive approach that is difficult to apply to any classification model. In this paper we extend that line of research and propose a computationally less involved feature selection technique based on descriptive statistics (mean and standard deviation) of the neural signatures across subjects. This approach reveals to be a good compromise between prediction accuracy and numerical complexity.
机译:我们认为,根据通过脑电图(EEG)观察到的脑活动,我们考虑学习歧视人类受试者的情绪状态。收集EEG信号,而受试者正在观察具有正或负情绪内容的高唤起图像。这个问题很重要,因为这种分类器构成隐藏情绪状态的“虚拟传感器”,这对于心理学科学研究和临床应用有用。特征选择具有重要作用。最近我们提出了一种顺序特征选择(SFS)程序,其降低了受试者之间的固有数据变异性,并导致高级情绪识别准确性(98%)。然而,SFS​​是一种计算密集型方法,难以适用于任何分类模型。在本文中,我们将该研究线扩展并基于跨对象的神经签名的描述性统计(均值和标准偏差)来提出计算不那么涉及的特征选择技术。这种方法揭示了预测准确性和数值复杂性之间的良好折衷。

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