Selected article for: "air travel volume and Poisson distribution"

Author: Pablo M De Salazar; Rene Niehus; Aimee Taylor; Caroline O Buckee; Marc Lipsitch
Title: Using predicted imports of 2019-nCoV cases to determine locations that may not be identifying all imported cases
  • Document date: 2020_2_5
  • ID: 9fd5a49o_8
    Snippet: The model is as follows. We assumed that across the n =49 high surveillance locations the case counts follow a Poisson distribution, and that the expected case count is linearly proportional to the daily air travel volume:.....
    Document: The model is as follows. We assumed that across the n =49 high surveillance locations the case counts follow a Poisson distribution, and that the expected case count is linearly proportional to the daily air travel volume:

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