Research Experience for Teachers, 2016

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Presentation transcript:

Research Experience for Teachers, 2016 Learning Goal Classroom Activities Research Experience for Teachers, 2016 Research Project Investigated: Predicting the Where and What of actors and actions through Online Action Localization Khurram Soomro, Haroon Idrees, Mubarak Shah, Center for Research in Computer Vision (CRCV), University of Central Florida (UCF). 2016. Teaching Computers to “see” and “learn” from prior “experience” or data Bayes Rule Activities “Learning from experience” Bayes’ Rule “Learning from experience” Bayesian filtering allows us to predict the chance a message is really spam given the “test results” (the presence of certain words). There are certain words that have a higher chance of appearing in spam messages than in normal ones. Summary of Proposed Framework Applications Given that you test positive for diabetes on both tests, there is still an 11% chance that you do NOT actually have diabetes. Perhaps there is some other reason for the symptoms. Presented by: Sharon Shyrock Lyman High School, AP Statistics Teacher