1 1 2 3 A mutual information analysis of neural coding of speech by low 4 frequency MEG phase information 5

نویسندگان

  • Gregory B. Cogan
  • David Poeppel
چکیده

3 A mutual information analysis of neural coding of speech by low 4 frequency MEG phase information 5 Gregory B. Cogan & David Poeppel 6 7 1 Neuroscience and Cognitive Science, University of Maryland College Park 8 2 Department of Psychology, NYU 9 3 Center for Neural Science, NYU 10 11 Running Head: Mutual Information and MEG Phase 12 13 Address for Correspondence 14 Gregory B. Cogan 15 Department of Psychology & Center for Neural Science 16 New York University 17 6 Washington Place 18 New York NY 10003 19 [email protected] 20

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تاریخ انتشار 2011