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Adaptive learning with covariate shift-detection for motor imagery-based brain-computer interface

机译:基于运动图像的脑机接口的协变量偏移检测自适应学习

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摘要

A common assumption in traditional supervised learning is the similar probability distribution of data between the training phase and the testing/operating phase. When transitioning from the training to testing phase, a shift in the probability distribution of input data is known as a covariate shift. Covariate shifts commonly arise in a wide range of real-world systems such as electroencephalogram-based brain-computer interfaces (BCIs). In such systems, there is a necessity for continuous monitoring of the process behavior, and tracking the state of the covariate shifts to decide about initiating adaptation in a timely manner. This paper presents a covariate shift-detection and -adaptation methodology, and its application to motor imagery-based BCIs. A covariate shift-detection test based on an exponential weighted moving average model is used to detect the covariate shift in the features extracted from motor imagery-based brain responses. Following the covariate shift-detection test, the methodology initiates an adaptation by updating the classifier during the testing/operating phase. The usefulness of the proposed method is evaluated using real-world BCI datasets (i.e. BCI competition IV dataset 2A and 2B). The results show a statistically significant improvement in the classification accuracy of the BCI system over traditional learning and semi-supervised learning methods.
机译:传统监督学习中的一个常见假设是训练阶段和测试/操作阶段之间的数据概率分布相似。当从训练阶段过渡到测试阶段时,输入数据的概率分布中的偏移称为协变量偏移。协变量移位通常出现在许多现实系统中,例如基于脑电图的脑机接口(BCI)。在这样的系统中,有必要对过程行为进行连续监视,并跟踪协变量移位的状态,以便及时决定启动自适应。本文提出了一种协变量移位检测和自适应方法,并将其应用于基于运动图像的BCI。基于指数加权移动平均模型的协变量漂移检测测试用于检测从基于运动图像的大脑反应中提取的特征中的协变量漂移。在协变量移位检测测试之后,该方法通过在测试/操作阶段更新分类器来启动自适应。使用实际的BCI数据集(即BCI竞争IV数据集2A和2B)评估了该方法的有效性。结果表明,与传统学习方法和半监督学习方法相比,BCI系统的分类准确性在统计学上有显着提高。

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