内核双样本测试vs.大脑解码

E. Olivetti, Danilo Benozzo, S. M. Kia, Marta Ellero, T. Hartmann
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引用次数: 4

摘要

当受试者面对不同的刺激时,评估其大脑活动模式是否系统性地不同被称为“大脑解码”。这个问题最常见的解决方案是测试分类器是否能准确地从大脑数据中预测刺激的类型。在这项工作中,我们提出了一种不需要任何分类器的大脑解码问题的新方法。提出的方法是基于最近在机器学习文献中提出的高维双样本测试。该测试试图确定与一种刺激(即第一个样本)相关的一组大脑记录,以及与另一种刺激(即第二个样本)相关的一组大脑记录是否来自相同的概率分布。在这项工作中,我们说明了这种新方法的优点,并结合实验证据证明了它对面部、房屋和身体识别任务的脑磁图(MEG)数据的有效性。
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The Kernel Two-Sample Test vs. Brain Decoding
Assessing whether the patterns of brain activity systematically differ when the subject is presented with different sets of stimuli is called "brain decoding". The most common solution to this problem is based on testing whether a classifier can accurately predict the type of stimulus from brain data. In this work we present a novel approach to the brain decoding problem which does not require any classifier. The proposed method is based on a high-dimensional two-sample test recently proposed in the machine learning literature. The test tries to determine whether the set of brain recordings related to one kind of stimulus, i.e. the first sample, and the ones related to the other kind of stimulus, i.e. the second sample, are drawn from the same probability distribution or not. In this work we illustrate the advantages of this novel approach together with experimental evidence of its efficacy on magneto encephalographic (MEG) data from a Face, House and Body discrimination task.
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