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A new multiple-kernel-learning weighting method for localizing human brain magnetic activity

机译:定位人脑磁活动的一种新的多核学习加权方法

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This paper shows that pattern classification based on machine learning is a powerful tool to analyze human brain activity data obtained by magnetoencephalography (MEG). We propose a new weighting method using a multiple kernel learning (MKL) algorithm to localize the brain area contributing to the accurate vowel discrimination. Our MKL simultaneously estimates both the classification boundary and the weight of each MEG sensor; MEG amplitude obtained from each pair of sensors is an element of the feature vector. The estimated weight indicates how the corresponding sensor is useful for classifying the MEG response patterns. Our results show both the large-weight MEG sensors mainly in a language area of the brain and the high classification accuracy (73.0%) in the 100 ∼ 200 ms latency range.
机译:本文表明,基于机器学习的模式分类是分析磁脑图(MEG)获得的人脑活动数据的强大工具。我们提出了一种使用多核学习(MKL)算法的新加权方法来定位有助于准确元音识别的大脑区域。我们的MKL同时估计每个MEG传感器的分类边界和重量;从每对传感器获得的MEG振幅是特征向量的元素。估计的重量指示相应的传感器如何用于对MEG响应模式进行分类。我们的结果表明,大型MEG传感器主要位于大脑的语言区域,并且在100〜200 ms的延迟范围内具有很高的分类精度(73.0%)。

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