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Semi-supervised sparse representation classifier with random sample subset ensembles in fMRI-based brain state decoding

机译:基于fMRI的脑状态解码中具有随机样本子集的半监督稀疏表示分类器

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Multivariate classification techniques have been widely applied to decode brain states using functional magnetic resonance imaging (fMRI). Because the number of labeled samples is limited by the financial and safety consideration during fMRI data acquirement, it is not easy to train a robust classifier for fMRI data. Recently, semi-supervised learning has been proposed to train the classifier using both labeled training data and unlabeled data. Moreover, sparse representation based classification (SRC) has seldom been applied to fMRI data, although it exhibits a state-of-the-art classification performance in image processing. In this study, we proposed semi-supervised SRC with random sample subset ensemble strategy (semiSRC-RSSE) that used the average of class-specific coefficients as the SRC classification criterion and dynamically update the training dataset using the random sample subset ensemble method to measure the confidence of the prediction of each test sample. The results of the simulated and real fMRI experiments showed that semiSRC-RSSE method largely improved the classification accuracy of SRC and had better performance than support vector machine (SVM) and semi-supervised SVM with the random sample subset ensemble strategy (semiSVM-RSSE).
机译:多变量分类技术已广泛应用于使用功能磁共振成像(FMRI)解码脑状态。由于标记样本的数量受到FMRI数据获取期间的财务和安全考虑的限制,因此训练FMRI数据的强大分类器并不容易。最近,已经提出半监督学习使用标记的训练数据和未标记的数据来培训分类器。此外,基于稀疏的基于分类(SRC)已经很少应用于FMRI数据,尽管它在图像处理中表现出最先进的分类性能。在本研究中,我们提出了具有随机样本子集合策略(SEMISRC-RSSE)的半监控SRC,该策略使用类特定系数的平均值作为SRC分类标准,并使用随机样本子集合方法动态更新训练数据集来测量对每个测试样品预测的置信度。模拟和真实FMRI实验结果表明,SEMISRC-RSSE方法在很大程度上提高了SRC的分类精度,并且具有比支持向量机(SVM)和半监控SVM具有更好的性能,以及随机样本子集合策略(SEMISVM-RSSE) 。

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