From measurement to machine learning: Towards analysing cognition

This abstract will discuss machine learning and BCI efforts of the BBCI team and co-workers with the general focus on analysing cognition. Due to the fact that many different aspects are reviewed, a high overlap to prior own contributions is not only unavoidable but intentional.

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