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      A reductionist approach to the analysis of learning in brain-computer interfaces.

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      Biological cybernetics
      Springer Nature America, Inc

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          Abstract

          The complexity and scale of brain-computer interface (BCI) studies limit our ability to investigate how humans learn to use BCI systems. It also limits our capacity to develop adaptive algorithms needed to assist users with their control. Adaptive algorithm development is forced offline and typically uses static data sets. But this is a poor substitute for the online, dynamic environment where algorithms are ultimately deployed and interact with an adapting user. This work evaluates a paradigm that simulates the control problem faced by human subjects when controlling a BCI, but which avoids the many complications associated with full-scale BCI studies. Biological learners can be studied in a reductionist way as they solve BCI-like control problems, and machine learning algorithms can be developed and tested in closed loop with the subjects before being translated to full BCIs. The method is to map 19 joint angles of the hand (representing neural signals) to the position of a 2D cursor which must be piloted to displayed targets (a typical BCI task). An investigation is presented on how closely the joint angle method emulates BCI systems; a novel learning algorithm is evaluated, and a performance difference between genders is discussed.

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          Author and article information

          Journal
          Biol Cybern
          Biological cybernetics
          Springer Nature America, Inc
          1432-0770
          0340-1200
          Apr 2014
          : 108
          : 2
          Affiliations
          [1 ] Fitzpatrick Center for Interdisciplinary Engineering, Medicine and Applied Sciences (CIEMAS), Duke University, 100 & 101 Science Drive, Campus Box 90281, Durham, NC, 27710, USA, zd10@duke.edu.
          Article
          10.1007/s00422-014-0589-3
          24531644
          2e8b9ef3-dc33-4d78-bdce-cabeae6688cd
          History

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