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Cluster Validation Indices for fMRI data: Fuzzy C-Means with Feature Partitions versus Cluster Merging Strategies

机译:FMRI数据的群集验证指标:具有功能分区的模糊C型均值与群集合并策略

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Fuzzy C-Means (FCM) is a standard technique for exploratory analysis and is readily adaptable to integrate unique data characteristics and auxiliary feature relations. Distinguishing between the spatial and temporal features of functional magnetic resonance imaging (fMRI) time courses (TC) has proved effective in reducing the presence of false positives for stimulation studies. The fuzzy partitions generated by this FCM variant (FCMP) are compared to several cluster merging techniques using cluster validation indices. These indices quantify the degree to which a dataset justifies a particular membership partition. A basic cluster merging strategies is examined where closest samples in a distance matrix are merged. A novelty is the use of alternate centroid definitions. Finally, the dynamic modeling employed by the CHAMELEON clustering algorithm is examined. All algorithms are evaluated on a Tourette's fMRI dataset.
机译:模糊C-Means(FCM)是一种用于探索性分析的标准技术,并且易于适应集成唯一的数据特征和辅助特征关系。区分功能磁共振成像(FMRI)时间课程(TC)的空间和时间特征已经有效地降低了刺激研究的误报的存在。使用群集验证索引将由该FCM变量(FCMP)生成的模糊分区与多个群集合并技术进行比较。这些索引量化了数据集标识特定成员资格分区的程度。检查基本集群合并策略,其中距离矩阵中最近的样本合并。新颖性是使用备用质心定义。最后,检查了变色龙聚类算法采用的动态建模。所有算法都在Tourette的FMRI数据集上进行评估。

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