Information-theoretic analysis of neural activity

نویسنده

  • Jonathan D. Victor
چکیده

direct yes yes discrete yes no unfavorable virtually none no no metric space yes no point process yes no very favorable specific models yes yes embedding yes maybe function of time yes yes favorable continuous yes minimal context tree no yes discrete yes no favorable context tree no minimal principal components yes maybe function of time yes yes favorable rate envelope yes yes reconstruction maybe yes function of time yes yes favorable Volterra no yes power series yes maybe point process yes no favorable order-by-order no yes compression no yes discrete yes no very favorable virtually none no minimal spectrotemporal yes yes function of time yes yes favorable continuous (time and frequency) no yes Stimulus Types Conceptual Aspects Response Types

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تاریخ انتشار 2006