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Aggregating Classification Accuracy across Time: Application to Single Trial EEG

机译:跨时间汇总分类准确性:对单次试用eeg的应用程序

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We present a method for binary on-line classification of triggered but temporally blurred events that are embedded in noisy time series in the context of on-line discrimination between left and right imaginary hand-movement. In particular the goal of the binary classification problem is to obtain the decision, as fast and as reliably as possible from the recorded EEG single trials. To provide a probabilistic decision at every time-point t the presented method gathers information from two distinct sequences of features across time. In order to incorporate decisions from prior time-points we suggest an appropriate weighting scheme, that emphasizes time instances, providing a higher discriminatory power between the instantaneous class distributions of each feature, where the discriminatory power is quantified in terms of the Bayes error of misclassification. The effectiveness of this procedure is verified by its successful application in the 3rd BCI competition. Disclosure of the data after the competition revealed this approach to be superior with single trial error rates as low as 10.7, 11.5 and 16.7% for the three different subjects under study.
机译:我们在左右虚拟手动运动之间的在线识别的背景下展示了一种触发的触发但时间模糊事件的二进制单线分类,该方法嵌入在嘈杂的时间序列中。特别是二进制分类问题的目标是从记录的EEG单试验中获得尽可能快速地获得决定。为了在每个时间点T提供概率决定,所呈现的方法在跨时间的两个不同的特征序列中收集信息。为了从先前时间点纳入决策,我们建议了一种适当的加权方案,其强调时间实例,在每个特征的瞬时类分布之间提供更高的鉴别权力,其中歧视动力在贝叶斯错误分类的错误方面量化。该程序的有效性通过其在第三届BCI竞争中的成功申请核实。在竞争之后披露数据,揭示了这种方法的单一试验率低至10.7,11.5和16.7%,对于研究下的三个不同科目。

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