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DTSTART:20190310T070000
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UID:69b49ae851717
DTSTART;TZID=America/Toronto:20200122T160000
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URL:https://uwaterloo.ca/artificial-intelligence-group/events/masters-thesi
 s-presentation-classifier-based-approach-out
LOCATION:E7 - Engineering 7 200 University Ave West 5419 Waterloo ON N2L 3G
 1 Canada
SUMMARY:Master’s Thesis Presentation: Classifier-based Approach for\nOut-
 of-distribution Detection
CLASS:PUBLIC
DESCRIPTION:SACHIN VERNEKAR\, MASTER’S CANDIDATE\n_David R. Cheriton Scho
 ol of Computer Science_\n\nDiscriminatively trained neural classifiers can
  be trusted only when\nthe input data comes from the training distribution
  (in-distribution).\nTherefore\, detecting out-of-distribution (OOD) sampl
 es is very\nimportant to avoid classification errors.
DTSTAMP:20260313T231656Z
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