Low information transfer rate is a major bottleneck for brain-computer interfaces based on non-invasive electroencephalography (EEG) for clinical applications. This led to the development of more robust and accurate classifiers. In this study, we investigate the performance of quantum-enhanced support vector classifier (QSVC). Training (predicting) balanced accuracy of QSVC was 83.17 (50.25) %. This result shows that the classifier was able to learn from EEG data, but that more research is required to obtain higher predicting accuracy. This could be achieved by a better configuration of the classifier, such as increasing the number of shots.
翻译:低信息传输率是用于临床应用的非侵入性脑电学(EEG)基础上的大脑-计算机界面的一个主要瓶颈。这导致开发了更有力和准确的分类器。在本研究中,我们调查了量子增强支持矢量分类器(QSVC)的性能。QSVC的培训(预测)平衡准确性为83.17(50.25)%。这一结果表明,分类器能够从EEG数据中学习,但需要开展更多的研究才能获得更高的预测准确性。这可以通过更好的分类器配置实现,例如增加镜头数。