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Multi-Task Learning for Commercial Brain Computer Interfaces

机译:商业大脑计算机接口的多任务学习

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In the field of Brain Computer Interfaces, one of the most crucial hindrances towards everyday applicability is the problem of subject-to-subject generalization. This adheres to the fact that neural signals vary significantly across subjects, because of the inherent person specific variability, rendering a subject calibration process necessary for the pattern recognition mechanisms of a BCI to achieve a notable performance. In the present work, we explore this phenomenon on two open datasets from mental monitoring experiments which utilized a commercial BCI device (Neurosky). This passive BCI setting with economical hardware is one of the must promising in terms of commercial appeal and hence it has more potential to be employed by multiple subjects-users. We visualize the so-called inter subject variability problem and apply machine learning methods commonly used in BCI literature. Subsequently we employ multi-task learning algorithms, setting each subject specific classification as a separate task. The experiments reveal that multi-task approaches achieve better accuracy with increasing number of subjects in contrast to conventional models, while providing insights that are consistent among subjects and agree with the relevant literature.
机译:在脑计算机接口领域,对日常应用的最关键的障碍之一是对象到对象的泛化问题。这坚持了这样一个事实,即由于固有的特定于人的变异性,神经信号在受试者之间会发生显着变化,这使得受试者校准过程对于BCI的模式识别机制实现显着性能是必需的。在当前的工作中,我们在来自心理监测实验的两个开放数据集上探索了这种现象,该实验使用了商用BCI设备(Neurosky)。就商业吸引力而言,这种具有经济硬件的被动BCI设置是必须有前途的应用之一,因此它具有更多的潜力供多个主题用户使用。我们将所谓的主题间可变性问题可视化,并应用BCI文献中常用的机器学习方法。随后,我们采用多任务学习算法,将每个主题的特定分类设置为单独的任务。实验表明,与传统模型相比,多任务方法随着对象数量的增加而实现了更高的准确性,同时提供了各主题之间一致的见解并与相关文献相一致。

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