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Machine learning / Thresholding / Functional magnetic resonance imaging / Cluster analysis / Mixture model / Statistical significance / Signal-to-noise ratio / Gaussian function / Noise / Statistics / Neuroimaging / Image processing
Date: 2013-05-06 04:59:23
Machine learning
Thresholding
Functional magnetic resonance imaging
Cluster analysis
Mixture model
Statistical significance
Signal-to-noise ratio
Gaussian function
Noise
Statistics
Neuroimaging
Image processing

METHODS ARTICLE published: 25 August 2012 doi: [removed]fnhum[removed]HUMAN NEUROSCIENCE

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