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Statistical theory

We work on probabilistic statistical models for analyzing multivariate data. This is not only important for the neuroscientific applications, but also leads to general-purpose statistical models.

A fundamental mathematical method that we use is independent component analysis together with some of its extensions. A particularly important project is on causal analysis.

Research projects: FastICA, ICASSO, NMFsc, LiNGAM (causal analysis), Score matching


Last update: 23 Jan 2009. Page content by: Webmaster.  
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