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A semi-supervised support vector machine approach for parameter setting in motor imagery-based brain computer interfaces

机译:在基于运动图像的脑计算机接口中设置参数的半监督支持向量机方法

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摘要

Parameter setting plays an important role for improving the performance of a brain computer interface (BCI). Currently, parameters (e.g. channels and frequency band) are often manually selected. It is time-consuming and not easy to obtain an optimal combination of parameters for a BCI. In this paper, motor imagery-based BCIs are considered, in which channels and frequency band are key parameters. First, a semi-supervised support vector machine algorithm is proposed for automatically selecting a set of channels with given frequency band. Next, this algorithm is extended for joint channel-frequency selection. In this approach, both training data with labels and test data without labels are used for training a classifier. Hence it can be used in small training data case. Finally, our algorithms are applied to a BCI competition data set. Our data analysis results show that these algorithms are effective for selection of frequency band and channels when the training data set is small.
机译:参数设置对于改善大脑计算机接口(BCI)的性能起着重要作用。当前,通常手动选择参数(例如,信道和频带)。获得BCI的参数的最佳组合既费时又不容易。在本文中,考虑了基于运动图像的BCI,其中通道和频带是关键参数。首先,提出了一种半监督支持向量机算法,用于自动选择给定频段的一组信道。接下来,将该算法扩展为联合信道频率选择。在这种方法中,带有标签的训练数据和没有标签的测试数据都用于训练分类器。因此,它可以用于小的训练数据案例。最后,我们的算法被应用于BCI竞争数据集。我们的数据分析结果表明,当训练数据集较小时,这些算法对于选择频带和信道是有效的。

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