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Sequential Error Rate evaluation of SSVEP classification problem with Bayesian sequential learning

机译:贝叶斯连续学习SSVEP分类问题的顺序误差率评价

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An attempt was made to evaluate the Sequential Error Rate (SER) of an SSVEP classification problem with a Bayesian sequential learning algorithm. Sequential Error Rate refers to the average classification error rate windowed over a short trial period. The algorithm was implemented by the Sequential Monte Carlo method. As opposed to the batch learning algorithm, the sequential learning algorithm does not divide the data into training and test datasets; rather, it starts learning with the first single trial data and proceeds with the learning sequentially using the rest of the data. The algorithm was tested against an SSVEP classification problem. The algorithm appeared functional.
机译:尝试通过贝叶斯顺序学习算法评估SSVEP分类问题的顺序误差率(SER)。顺序错误率是指在短暂的试用期间窗口窗口的平均分类错误率。该算法由顺序蒙特卡罗方法实现。与批量学习算法相反,顺序学习算法不会将数据划分为训练和测试数据集;相反,它开始使用第一个单一试用数据学习,并使用其余数据顺序地继续学习。该算法针对SSVEP分类问题进行了测试。该算法出现了功能。

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