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Guess or Not? A Brain-Computer Interface Using EEG Signals for Revealing the Secret behind Scores

机译:猜测还是不是? 使用EEG信号的脑电脑界面揭示分数背后的秘密

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Now examinations and scores serve as the main criterion for a student's academic performance. However, students use guessing strategies to improve the chances of choosing the right answer in a test. Therefore, scores do not reflect actual levels of the student's knowledge and skills. In this paper, we propose a brain-computer interface (BCI) to estimate whether a student guesses on a test question or masters it when s/he chooses the right answer in logic reasoning. To build this BCI, we first define the "Guessing" and employ Raven's Progressive Matrices as logic tests in the experiment to collect EEG signals, then we propose a sliding time-window with quorum-based voting (STQV) approach to recognize the state of "Guessing" or "Understanding", together with FBCSP and end-to-end ConvNet classification algorithms. Results show that this BCI yields an accuracy of 83.71% and achieves a good performance in distinguishing "Guessing" from "Understanding".
机译:现在,考试和分数是学生的学业成绩的主要标准。 但是,学生使用猜测策略来改善在测试中选择正确答案的机会。 因此,得分不反映学生知识和技能的实际水平。 在本文中,我们提出了一个大脑 - 计算机接口(BCI)来估计学生是否猜测测试问题或在S /他选择逻辑推理中正确的答案时估计它。 要构建此BCI,我们首先定义“猜测”,并使用Raven的渐进性矩阵作为实验中的逻辑测试来收集EEG信号,然后我们提出了一种具有基于仲裁的投票(STQV)方法的滑动时间窗口来识别状态 “猜测”或“理解”,以及FBCSP和端到端的ConvNet分类算法。 结果表明,该BCI的准确性为83.71%,实现了在“理解”中区分“猜测”的良好表现。

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