January 11, 1996 - January 11, 2029

  • Date:05TuesdayFebruary 2008

    Information-theoretic analysis of neural data: why do it, why it is challenging, and what can be learned

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    Time
    12:00 - 12:00
    Location
    Arthur and Rochelle Belfer Building for Biomedical Research
    LecturerProf. Jonathan Victor
    Cornell University
    Organizer
    Department of Brain Sciences
    Contact
    AbstractShow full text abstract about Entropy and information are quantities of interest to neuros...»
    Entropy and information are quantities of interest to neuroscientists, because of their mathematical properties and because they place limits on the performance of a neural system. However, estimating these quantities from neural spike trains is much more challenging than estimating other statistics, such as mean and variance. The central difficulty in estimating information is tightly linked to the properties of information that make it a desirable quantity to estimate.

    To surmount this fundamental difficulty, most approaches to estimation of information rely (perhaps implicitly) on a model for how spike trains are related. But the nature of these model assumptions vary widely. As a result, information estimates are useful not only in situations in which several approaches provide mutually consistent results, but also in situations in which they differ. These ideas are illustrated with examples from the visual and gustatory systems.
    Lecture