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LEARNING DICTIONARIES FROM CORRELATED DATA: APPLICATION TO FMRI DATA ANALYSIS

机译:相关数据学习词​​典:应用于FMRI数据分析

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Sequential dictionary learning via the K-SVD algorithm has been revealed as a successful alternative to conventional data driven methods such as independent component analysis (ICA) for functional magnetic resonance imaging (fMRI) data analysis. fMRI data sets are however structured data matrices with notions of spatio-temporal correlation. This prior information has not been included in the K-SVD algorithm when applied in fMRI data analysis. In this paper we remedy to this situation by proposing a variant of the K-SVD algorithm dedicated to fMRI data analysis by taking into account this prior information. The proposed algorithm accounts for the known correlation structure in the fMRI data by using the squared Q, R-norm instead of the Frobenius norm for rank one approximation in the dictionary update stage. The performance of the proposed algorithm is illustrated through simulations and applications on a real fMRI data set.
机译:通过K-SVD算法的顺序字典已经被揭示为传统数据驱动方法的成功替代方案,例如用于功能磁共振成像(FMRI)数据分析的独立分量分析(ICA)。然而,FMRI数据集是具有时空相关概念的结构化数据矩阵。当在FMRI数据分析中应用时,该先前信息尚未包含在K-SVD算法中。在本文中,通过考虑到这一先前信息,通过提出专用于FMRI数据分析的K-SVD算法的变体来解决这种情况。所提出的算法通过使用Squared Q,R-Norm而不是FROBenius规范来占FMRI数据中的已知相关性结构,而不是在字典更新阶段中的rount reasimation。所提出的算法的性能是通过在真实的FMRI数据集上的仿真和应用程序进行说明的。

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