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Single-trial Detection of Semantic Anomalies from EEG during Listening to Spoken Sentences

机译:脑电图中脑电图中的语义异常的单试检测

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We propose a method for the automatic detection of mismatched feelings that occur in communication. As our first step, we examined the semantically anomalous feelings from EEGs when participants listened to spoken sentences. Previous studies have shown that the event-related potentials (ERP) of an electroencephalogram (EEG) are evoked in the auditory and visual modalities where a semantic anomaly occurs. We expand this knowledge and detect it from a single-trial ERP using machine learning techniques. We recorded the brain activity of eight participants as they listened to sentences that contained semantic anomalies and found that a combination of feature selection using linear discriminant analysis and linear kernel support vector machines achieved the highest accuracy that exceeded 60%. By applying this technique, we plan to detect other types of anomalies in practical situations.
机译:我们提出了一种用于自动检测通信中发生的错配的方法。作为我们的第一步,当参与者听句子时,我们检查了脑电图的语义上的感受。以前的研究表明,在发生语义异常的听觉和视觉模式中唤起了脑电图(EEG)的事件相关电位(ERP)。我们使用机器学习技术扩展了这些知识并从单试,检测了一次试验ERP。我们录制了八位参与者的大脑活动,因为它们听取含有语义异常的句子,发现使用线性判别分析和线性核心支持向量机的特征选择的组合实现了超过60%的最高精度。通过应用这种技术,我们计划在实际情况下检测其他类型的异常。

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