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Hyperdimensional Computing for Blind and One-Shot Classification of EEG Error-Related Potentials

机译:盲人盲误差误差潜力的盲人和单次分类的超比计算

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The mathematical properties of high-dimensional (HD) spaces show remarkable agreement with behaviors controlled by the brain. Computing with HD vectors, referred to as "hypervectors," is a brain-inspired alternative to computing with numbers. HD computing is characterized by generality, scalability, robustness, and fast learning, making it a prime candidate for utilization in application domains such as brain-computer interfaces. We describe the use of HD computing to classify electroencephalography (EEG) error-related potentials for noninvasive brain-computer interfaces. Our algorithmnaturallyencodes neural activity recorded from 64 EEG electrodes to a single temporal-spatial hypervector without requiring any electrode selection process. This hypervector represents the event of interest, can be analyzed to identify the most discriminative electrodes, and is used for recognition of the subject's intentions. Using the full set of training trials, HD computing achieves on average 5% higher single-trial classification accuracy compared to a conventional machine learning method on this task (74.5% vs. 69.5%) and offers further advantages: (1) Our algorithm learns fast: using only 34% of training trials it achieves an average accuracy of 70.5%, surpassing the conventional method. (2) Conventional method requires priordomain expertknowledge, or a separate process, to carefully select a subset of electrodes for a subsequent preprocessor and classifier, whereas our algorithm blindly uses all 64 electrodes, tolerates noises in data, and the resulting hypervector is intrinsically clustered into HD space; in addition, most preprocessing of the electrode signal can be eliminated while maintaining an average accuracy of 71.7%.
机译:高维(HD)空间的数学特性显示出与大脑控制的行为的显着协议。使用高清矢量计算,称为“超频器”是用数字计算的脑激发替代品。高清计算的特征在于泛,可伸缩性,鲁棒性和快速学习,使其成为诸如脑计算机接口之类的应用域中使用的主要候选者。我们描述了使用高清计算来对非侵入性脑 - 计算机接口进行分类脑电图(EEG)误差相关电位。我们的算法基于64个EEG电极记录到单个时间空间超光线的神经活动,而无需任何电极选择过程。该超级插座表示感兴趣的事件,可以分析以识别最辨别的电极,并用于识别受试者的意图。使用全套培训试验,高清计算平均达到5%的单试分类准确性,与此任务的传统机器学习方法相比(74.5%与69.5%)相比,提供了进一步的优势:(1)我们的算法学习快速:仅使用34%的培训试验,它实现了70.5%的平均精度,超越了传统方法。 (2)传统方法需要Priordomain专业知识或单独的过程,以便仔细选择后续预处理器和分类器的电极子集,而我们的算法盲目地使用所有64个电极,容忍数据中的噪声,并且所产生的超视频本质上集群高清空间;另外,可以消除电极信号的大多数预处理,同时保持平均精度为71.7%。

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